def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.val_loss_heatmap = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = PoseLossManager(configer)
        self.pose_model_manager = PoseModelManager(configer)
        self.pose_data_loader = PoseDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
Ejemplo n.º 2
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 def __init__(self):
     self.batch_time = AverageMeter()
     self.data_time = AverageMeter()
     self.train_losses = AverageMeter()
     self.val_losses = AverageMeter()
     self.log_stream = open('./log.txt', 'w')
     self.cls_net = None
     self.train_loader = None
     self.val_loader = None
     self.batch = 0
     self.max_batch = 500000
Ejemplo n.º 3
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.model_manager = ModelManager(configer)
        self.seg_data_loader = DataLoader(configer)

        self.gan_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()
Ejemplo n.º 4
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_loss_manager = DetLossManager(configer)
        self.det_model_manager = DetModelManager(configer)
        self.det_data_loader = DetDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
Ejemplo n.º 5
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.seg_running_score = SegRunningScore(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_model_manager = ModelManager(configer)
        self.seg_data_loader = DataLoader(configer)

        self.seg_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()
Ejemplo n.º 6
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.cls_loss_manager = ClsLossManager(configer)
        self.cls_model_manager = ClsModelManager(configer)
        self.cls_data_loader = ClsDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)
        self.cls_running_score = ClsRunningScore(configer)
        self.visdom_helper = VisdomHelper()

        self.cls_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
Ejemplo n.º 7
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.seg_running_score = SegRunningScore(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_loss_manager = SegLossManager(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = SegDataLoader(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.seg_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
Ejemplo n.º 8
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.cls_loss_manager = LossManager(configer)
        self.cls_model_manager = ClsModelManager(configer)
        self.cls_data_loader = DataLoader(configer)
        self.cls_running_score = ClsRunningScore(configer)

        self.cls_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()
Ejemplo n.º 9
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_model_manager = ModelManager(configer)
        self.det_data_loader = DataLoader(configer)
        self.fr_priorbox_layer = FRPriorBoxLayer(configer)
        self.det_running_score = DetRunningScore(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()
Ejemplo n.º 10
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = LossManager(configer)
        self.pose_model_manager = ModelManager(configer)
        self.pose_data_loader = DataLoader(configer)
        self.heatmap_generator = HeatmapGenerator(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()
Ejemplo n.º 11
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_model_manager = ModelManager(configer)
        self.det_data_loader = DataLoader(configer)
        self.yolo_detection_layer = YOLODetectionLayer(configer)
        self.yolo_target_generator = YOLOTargetGenerator(configer)
        self.det_running_score = DetRunningScore(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()
Ejemplo n.º 12
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    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_loss_manager = DetLossManager(configer)
        self.det_model_manager = DetModelManager(configer)
        self.det_data_loader = DetDataLoader(configer)
        self.fr_priorbox_layer = FRPriorBoxLayer(configer)
        self.rpn_target_generator = RPNTargetGenerator(configer)
        self.det_running_score = DetRunningScore(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()
Ejemplo n.º 13
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class YOLOv3(object):
    """
      The class for YOLO v3. Include train, val, test & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_loss_manager = LossManager(configer)
        self.det_model_manager = DetModelManager(configer)
        self.det_data_loader = DataLoader(configer)
        self.yolo_detection_layer = YOLODetectionLayer(configer)
        self.yolo_target_generator = YOLOTargetGenerator(configer)
        self.det_running_score = DetRunningScore(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()

    def _init_model(self):
        self.det_net = self.det_model_manager.object_detector()
        self.det_net = RunnerHelper.load_net(self, self.det_net)

        self.optimizer, self.scheduler = Trainer.init(self,
                                                      self._get_parameters())

        self.train_loader = self.det_data_loader.get_trainloader()
        self.val_loader = self.det_data_loader.get_valloader()

        self.det_loss = self.det_loss_manager.get_det_loss()

    def _get_parameters(self):
        lr_1 = []
        lr_10 = []
        params_dict = dict(self.det_net.named_parameters())
        for key, value in params_dict.items():
            if 'backbone' not in key:
                lr_10.append(value)
            else:
                lr_1.append(value)

        params = [{
            'params': lr_1,
            'lr': self.configer.get('lr', 'base_lr')
        }, {
            'params': lr_10,
            'lr': self.configer.get('lr', 'base_lr') * 10.
        }]

        return params

    def train(self):
        """
          Train function of every epoch during train phase.
        """
        self.det_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.runner_state['epoch'] += 1

        # data_tuple: (inputs, heatmap, maskmap, vecmap)
        for i, data_dict in enumerate(self.train_loader):
            Trainer.update(self, backbone_list=(0, ))
            inputs = data_dict['img']
            batch_gt_bboxes = data_dict['bboxes']
            batch_gt_labels = data_dict['labels']
            input_size = [inputs.size(3), inputs.size(2)]

            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs = RunnerHelper.to_device(self, inputs)

            # Forward pass.
            feat_list, predictions, _ = self.det_net(inputs)

            targets, objmask, noobjmask = self.yolo_target_generator(
                feat_list, batch_gt_bboxes, batch_gt_labels, input_size)
            targets, objmask, noobjmask = RunnerHelper.to_device(
                self, targets, objmask, noobjmask)
            # Compute the loss of the train batch & backward.
            loss = self.det_loss(predictions, targets, objmask, noobjmask)

            self.train_losses.update(loss.item(), inputs.size(0))

            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.runner_state['iters'] += 1

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.runner_state['epoch'],
                            self.runner_state['iters'],
                            self.configer.get('solver', 'display_iter'),
                            RunnerHelper.get_lr(self.optimizer),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            if self.configer.get('lr', 'metric') == 'iters' \
                    and self.runner_state['iters'] == self.configer.get('solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'test_interval') == 0:
                self.val()

    def val(self):
        """
          Validation function during the train phase.
        """
        self.det_net.eval()
        start_time = time.time()
        with torch.no_grad():
            for i, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                batch_gt_bboxes = data_dict['bboxes']
                batch_gt_labels = data_dict['labels']
                input_size = [inputs.size(3), inputs.size(2)]
                # Forward pass.
                inputs = RunnerHelper.to_device(self, inputs)
                feat_list, predictions, detections = self.det_net(inputs)

                targets, objmask, noobjmask = self.yolo_target_generator(
                    feat_list, batch_gt_bboxes, batch_gt_labels, input_size)
                targets, objmask, noobjmask = RunnerHelper.to_device(
                    self, targets, objmask, noobjmask)

                # Compute the loss of the val batch.
                loss = self.det_loss(predictions, targets, objmask, noobjmask)
                self.val_losses.update(loss.item(), inputs.size(0))

                batch_detections = YOLOv3Test.decode(detections, self.configer,
                                                     input_size)
                batch_pred_bboxes = self.__get_object_list(
                    batch_detections, input_size)

                self.det_running_score.update(batch_pred_bboxes,
                                              batch_gt_bboxes, batch_gt_labels)

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            RunnerHelper.save_net(self,
                                  self.det_net,
                                  iters=self.runner_state['iters'])
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            Log.info('Val mAP: {}'.format(self.det_running_score.get_mAP()))
            self.det_running_score.reset()
            self.batch_time.reset()
            self.val_losses.reset()
            self.det_net.train()

    def __get_object_list(self, batch_detections, input_size):
        batch_pred_bboxes = list()
        for idx, detections in enumerate(batch_detections):
            object_list = list()
            if detections is not None:
                for x1, y1, x2, y2, conf, cls_conf, cls_pred in detections:
                    xmin = x1.cpu().item()
                    ymin = y1.cpu().item()
                    xmax = x2.cpu().item()
                    ymax = y2.cpu().item()
                    cf = conf.cpu().item()
                    cls_pred = cls_pred.cpu().item()
                    object_list.append([
                        xmin, ymin, xmax, ymax,
                        int(cls_pred),
                        float('%.2f' % cf)
                    ])

            batch_pred_bboxes.append(object_list)

        return batch_pred_bboxes
Ejemplo n.º 14
0
class OpenPose(object):
    """
      The class for Pose Estimation. Include train, val, test & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_schedule_loss = AverageMeter()
        self.train_losses = AverageMeter()
        self.train_loss_heatmap = AverageMeter()
        self.train_loss_associate = AverageMeter()
        self.val_losses = AverageMeter()
        self.val_loss_heatmap = AverageMeter()
        self.val_loss_associate = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = LossManager(configer)
        self.pose_model_manager = ModelManager(configer)
        self.pose_data_loader = DataLoader(configer)
        self.heatmap_generator = HeatmapGenerator(configer)
        self.paf_generator = PafGenerator(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()

    def _init_model(self):
        self.pose_net = self.pose_model_manager.multi_pose_detector()
        self.pose_net = RunnerHelper.load_net(self, self.pose_net)

        self.optimizer, self.scheduler = Trainer.init(self,
                                                      self._get_parameters())

        self.train_loader = self.pose_data_loader.get_trainloader()
        self.val_loader = self.pose_data_loader.get_valloader()

        self.weights = self.configer.get('network', 'loss_weights')
        self.mse_loss = self.pose_loss_manager.get_pose_loss()

    def _get_parameters(self):
        lr_1 = []
        lr_2 = []
        params_dict = dict(self.pose_net.named_parameters())
        for key, value in params_dict.items():
            if 'backbone' not in key:
                lr_2.append(value)
            else:
                lr_1.append(value)

        params = [
            {
                'params': lr_1,
                'lr': self.configer.get('lr', 'base_lr'),
                'weight_decay': 0.0
            },
            {
                'params': lr_2,
                'lr': self.configer.get('lr', 'base_lr'),
                'weight_decay': 0.0
            },
        ]

        return params

    def train(self):
        """
          Train function of every epoch during train phase.
        """
        self.pose_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.runner_state['epoch'] += 1
        self.scheduler.step(self.train_schedule_loss.avg,
                            epoch=self.configer.get('epoch'))
        self.train_schedule_loss.reset()
        # data_tuple: (inputs, heatmap, maskmap, vecmap)
        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['img']
            maskmap = data_dict['maskmap']
            heatmap = data_dict['heatmap']
            vecmap = data_dict['vecmap']

            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs, heatmap, maskmap, vecmap = RunnerHelper.to_device(
                self, inputs, heatmap, maskmap, vecmap)

            # Forward pass.
            paf_out, heatmap_out = self.pose_net(inputs)

            # Compute the loss of the train batch & backward.
            loss_heatmap = self.mse_loss(heatmap_out,
                                         heatmap,
                                         mask=maskmap,
                                         weights=self.weights)
            loss_associate = self.mse_loss(paf_out,
                                           vecmap,
                                           mask=maskmap,
                                           weights=self.weights)
            loss = 2.0 * loss_heatmap + loss_associate

            self.train_losses.update(loss.item(), inputs.size(0))
            self.train_schedule_loss.update(loss.item(), inputs.size(0))
            self.train_loss_heatmap.update(loss_heatmap.item(), inputs.size(0))
            self.train_loss_associate.update(loss_associate.item(),
                                             inputs.size(0))

            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.runner_state['iters'] += 1

            # Print the log info & reset the states.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info('Loss Heatmap:{}, Loss Asso: {}'.format(
                    self.train_loss_heatmap.avg,
                    self.train_loss_associate.avg))
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.runner_state['epoch'],
                            self.runner_state['iters'],
                            self.configer.get('solver', 'display_iter'),
                            RunnerHelper.get_lr(self.optimizer),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))

                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()
                self.train_loss_heatmap.reset()
                self.train_loss_associate.reset()

            if self.configer.get('lr', 'metric') == 'iters' \
                    and self.runner_state['iters'] == self.configer.get('solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'test_interval') == 0:
                self.val()

    def val(self):
        """
          Validation function during the train phase.
        """
        self.pose_net.eval()
        start_time = time.time()

        with torch.no_grad():
            for i, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                maskmap = data_dict['maskmap']
                heatmap = data_dict['heatmap']
                vecmap = data_dict['vecmap']
                # Change the data type.
                inputs, heatmap, maskmap, vecmap = RunnerHelper.to_device(
                    self, inputs, heatmap, maskmap, vecmap)

                # Forward pass.
                paf_out, heatmap_out = self.pose_net(inputs)
                # Compute the loss of the val batch.
                loss_heatmap = self.mse_loss(heatmap_out[-1], heatmap, maskmap)
                loss_associate = self.mse_loss(paf_out[-1], vecmap, maskmap)
                loss = 2.0 * loss_heatmap + loss_associate

                self.val_losses.update(loss.item(), inputs.size(0))
                self.val_loss_heatmap.update(loss_heatmap.item(),
                                             inputs.size(0))
                self.val_loss_associate.update(loss_associate.item(),
                                               inputs.size(0))

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.runner_state['val_loss'] = self.val_losses.avg
            RunnerHelper.save_net(self,
                                  self.pose_net,
                                  val_loss=self.val_losses.avg)
            Log.info('Loss Heatmap:{}, Loss Asso: {}'.format(
                self.val_loss_heatmap.avg, self.val_loss_associate.avg))
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            self.batch_time.reset()
            self.val_losses.reset()
            self.val_loss_heatmap.reset()
            self.val_loss_associate.reset()
            self.pose_net.train()
Ejemplo n.º 15
0
class FCNSegmentor(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.seg_running_score = SegRunningScore(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_model_manager = ModelManager(configer)
        self.seg_data_loader = DataLoader(configer)

        self.seg_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()

    def _init_model(self):
        self.seg_net = self.seg_model_manager.semantic_segmentor()
        self.seg_net = RunnerHelper.load_net(self, self.seg_net)

        self.optimizer, self.scheduler = Trainer.init(
            self._get_parameters(), self.configer.get('solver'))

        self.train_loader = self.seg_data_loader.get_trainloader()
        self.val_loader = self.seg_data_loader.get_valloader()

        self.pixel_loss = self.seg_model_manager.get_seg_loss()

    def _get_parameters(self):
        lr_1 = []
        lr_10 = []
        params_dict = dict(self.seg_net.named_parameters())
        for key, value in params_dict.items():
            if 'backbone' not in key:
                lr_10.append(value)
            else:
                lr_1.append(value)

        params = [{
            'params': lr_1,
            'lr': self.configer.get('solver', 'lr')['base_lr']
        }, {
            'params': lr_10,
            'lr': self.configer.get('solver', 'lr')['base_lr'] * 1.0
        }]
        return params

    def train(self):
        """
          Train function of every epoch during train phase.
        """
        self.seg_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.

        for i, data_dict in enumerate(self.train_loader):
            Trainer.update(self,
                           backbone_list=(0, ),
                           solver_dict=self.configer.get('solver'))
            inputs = data_dict['img']
            targets = data_dict['labelmap']
            self.data_time.update(time.time() - start_time)
            # Change the data type.

            inputs, targets = RunnerHelper.to_device(self, inputs, targets)

            # Forward pass.
            outputs = self.seg_net(inputs)
            # outputs = self.module_utilizer.gather(outputs)
            # Compute the loss of the train batch & backward.
            loss = self.pixel_loss(outputs,
                                   targets,
                                   gathered=self.configer.get(
                                       'network', 'gathered'))
            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.runner_state['iters'] += 1

            # Print the log info & reset the states.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.runner_state['epoch'],
                            self.runner_state['iters'],
                            self.configer.get('solver', 'display_iter'),
                            RunnerHelper.get_lr(self.optimizer),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            if self.configer.get('solver', 'lr')['metric'] == 'iters' \
                    and self.runner_state['iters'] == self.configer.get('solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'test_interval') == 0:
                self.val()

        self.runner_state['epoch'] += 1

    def val(self, data_loader=None):
        """
          Validation function during the train phase.
        """
        self.seg_net.eval()
        start_time = time.time()

        data_loader = self.val_loader if data_loader is None else data_loader
        for j, data_dict in enumerate(data_loader):
            inputs = data_dict['img']
            targets = data_dict['labelmap']

            with torch.no_grad():
                # Change the data type.
                inputs, targets = RunnerHelper.to_device(self, inputs, targets)
                # Forward pass.
                outputs = self.seg_net(inputs)
                # Compute the loss of the val batch.
                loss = self.pixel_loss(outputs,
                                       targets,
                                       gathered=self.configer.get(
                                           'network', 'gathered'))
                outputs = RunnerHelper.gather(self, outputs)

            self.val_losses.update(loss.item(), inputs.size(0))
            self._update_running_score(outputs[-1], data_dict['meta'])

            # Update the vars of the val phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()

        self.runner_state['performance'] = self.seg_running_score.get_mean_iou(
        )
        self.runner_state['val_loss'] = self.val_losses.avg
        RunnerHelper.save_net(
            self,
            self.seg_net,
            performance=self.seg_running_score.get_mean_iou(),
            val_loss=self.val_losses.avg)

        # Print the log info & reset the states.
        Log.info('Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                 'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                                loss=self.val_losses))
        Log.info('Mean IOU: {}\n'.format(
            self.seg_running_score.get_mean_iou()))
        Log.info('Pixel ACC: {}\n'.format(
            self.seg_running_score.get_pixel_acc()))
        self.batch_time.reset()
        self.val_losses.reset()
        self.seg_running_score.reset()
        self.seg_net.train()

    def _update_running_score(self, pred, metas):
        pred = pred.permute(0, 2, 3, 1)
        for i in range(pred.size(0)):
            ori_img_size = metas[i]['ori_img_size']
            border_size = metas[i]['border_size']
            ori_target = metas[i]['ori_target']
            total_logits = cv2.resize(
                pred[i, :border_size[1], :border_size[0]].cpu().numpy(),
                tuple(ori_img_size),
                interpolation=cv2.INTER_CUBIC)
            labelmap = np.argmax(total_logits, axis=-1)
            self.seg_running_score.update(labelmap[None], ori_target[None])
Ejemplo n.º 16
0
class Trainer(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.seg_running_score = SegRunningScore(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_loss_manager = LossManager(configer)
        self.module_runner = ModuleRunner(configer)
        self.seg_model_manager = ModelManager(configer)
        self.seg_data_loader = DataLoader(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.seg_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.seg_net = self.seg_model_manager.semantic_segmentor()
        self.seg_net = self.module_runner.load_net(self.seg_net)

        Log.info('Params Group Method: {}'.format(
            self.configer.get('optim', 'group_method')))
        if self.configer.get('optim', 'group_method') == 'decay':
            params_group = self.group_weight(self.seg_net)
        else:
            assert self.configer.get('optim', 'group_method') is None
            params_group = self._get_parameters()

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            params_group)

        self.train_loader = self.seg_data_loader.get_trainloader()
        self.val_loader = self.seg_data_loader.get_valloader()

        self.pixel_loss = self.seg_loss_manager.get_seg_loss()

    @staticmethod
    def group_weight(module):
        group_decay = []
        group_no_decay = []
        for m in module.modules():
            if isinstance(m, nn.Linear):
                group_decay.append(m.weight)
                if m.bias is not None:
                    group_no_decay.append(m.bias)
            elif isinstance(m, nn.modules.conv._ConvNd):
                group_decay.append(m.weight)
                if m.bias is not None:
                    group_no_decay.append(m.bias)
            else:
                if hasattr(m, 'weight'):
                    group_no_decay.append(m.weight)
                if hasattr(m, 'bias'):
                    group_no_decay.append(m.bias)

        assert len(list(
            module.parameters())) == len(group_decay) + len(group_no_decay)
        groups = [
            dict(params=group_decay),
            dict(params=group_no_decay, weight_decay=.0)
        ]
        return groups

    def _get_parameters(self):
        bb_lr = []
        nbb_lr = []
        params_dict = dict(self.seg_net.named_parameters())
        for key, value in params_dict.items():
            if 'backbone' not in key:
                nbb_lr.append(value)
            else:
                bb_lr.append(value)

        params = [{
            'params': bb_lr,
            'lr': self.configer.get('lr', 'base_lr')
        }, {
            'params':
            nbb_lr,
            'lr':
            self.configer.get('lr', 'base_lr') *
            self.configer.get('lr', 'nbb_mult')
        }]
        return params

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.seg_net.train()
        start_time = time.time()

        for i, data_dict in enumerate(self.train_loader):
            if self.configer.get('lr', 'metric') == 'iters':
                self.scheduler.step(self.configer.get('iters'))
            else:
                self.scheduler.step(self.configer.get('epoch'))

            if self.configer.get('lr', 'is_warm'):
                self.module_runner.warm_lr(self.configer.get('iters'),
                                           self.scheduler,
                                           self.optimizer,
                                           backbone_list=[
                                               0,
                                           ])
            inputs = data_dict['img']
            targets = data_dict['labelmap']
            self.data_time.update(time.time() - start_time)
            # Change the data type.
            # inputs, targets = self.module_runner.to_device(inputs, targets)

            # Forward pass.
            outputs = self.seg_net(inputs)
            # outputs = self.module_utilizer.gather(outputs)
            # Compute the loss of the train batch & backward.
            loss = self.pixel_loss(outputs,
                                   targets,
                                   gathered=self.configer.get(
                                       'network', 'gathered'))
            if self.configer.exists('train', 'loader') and self.configer.get(
                    'train', 'loader') == 'rs':
                batch_size = self.configer.get(
                    'train', 'batch_size') * self.configer.get(
                        'train', 'batch_per_gpu')
                self.train_losses.update(loss.item(), batch_size)
            else:
                self.train_losses.update(loss.item(), inputs.size(0))

            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.module_runner.get_lr(self.optimizer),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            if self.configer.get('iters') == self.configer.get(
                    'solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'test_interval') == 0:
                self.__val()

        self.configer.plus_one('epoch')

    def __val(self, data_loader=None):
        """
          Validation function during the train phase.
        """
        self.seg_net.eval()
        start_time = time.time()

        data_loader = self.val_loader if data_loader is None else data_loader
        for j, data_dict in enumerate(data_loader):
            inputs = data_dict['img']
            targets = data_dict['labelmap']

            with torch.no_grad():
                # Change the data type.
                inputs, targets = self.module_runner.to_device(inputs, targets)
                # Forward pass.
                outputs = self.seg_net(inputs)
                # Compute the loss of the val batch.
                loss = self.pixel_loss(outputs,
                                       targets,
                                       gathered=self.configer.get(
                                           'network', 'gathered'))
                outputs = self.module_runner.gather(outputs)

            self.val_losses.update(loss.item(), inputs.size(0))
            self._update_running_score(outputs[-1], data_dict['meta'])
            # self.seg_running_score.update(pred.max(1)[1].cpu().numpy(), targets.cpu().numpy())

            # Update the vars of the val phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()

        self.configer.update(['performance'],
                             self.seg_running_score.get_mean_iou())
        self.configer.update(['val_loss'], self.val_losses.avg)
        self.module_runner.save_net(self.seg_net, save_mode='performance')
        self.module_runner.save_net(self.seg_net, save_mode='val_loss')

        # Print the log info & reset the states.
        Log.info('Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                 'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                                loss=self.val_losses))
        Log.info('Mean IOU: {}\n'.format(
            self.seg_running_score.get_mean_iou()))
        Log.info('Pixel ACC: {}\n'.format(
            self.seg_running_score.get_pixel_acc()))
        self.batch_time.reset()
        self.val_losses.reset()
        self.seg_running_score.reset()
        self.seg_net.train()

    def _update_running_score(self, pred, metas):
        pred = pred.permute(0, 2, 3, 1)
        for i in range(pred.size(0)):
            ori_img_size = metas[i]['ori_img_size']
            border_size = metas[i]['border_size']
            ori_target = metas[i]['ori_target']
            total_logits = cv2.resize(
                pred[i, :border_size[1], :border_size[0]].cpu().numpy(),
                tuple(ori_img_size),
                interpolation=cv2.INTER_CUBIC)
            labelmap = np.argmax(total_logits, axis=-1)
            self.seg_running_score.update(labelmap[None], ori_target[None])

    def train(self):
        # cudnn.benchmark = True
        if self.configer.get('network',
                             'resume') is not None and self.configer.get(
                                 'network', 'resume_val'):
            self.__val()

        while self.configer.get('iters') < self.configer.get(
                'solver', 'max_iters'):
            self.__train()

        self.__val(data_loader=self.seg_data_loader.get_valloader(
            dataset='val'))
        self.__val(data_loader=self.seg_data_loader.get_valloader(
            dataset='train'))
Ejemplo n.º 17
0
class YOLOv3(object):
    """
      The class for YOLO v3. Include train, val, test & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_loss_manager = DetLossManager(configer)
        self.det_model_manager = DetModelManager(configer)
        self.det_data_loader = DetDataLoader(configer)
        self.yolo_detection_layer = YOLODetectionLayer(configer)
        self.yolo_target_generator = YOLOTargetGenerator(configer)
        self.det_running_score = DetRunningScore(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.det_net = self.det_model_manager.object_detector()
        self.det_net = self.module_utilizer.load_net(self.det_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.det_data_loader.get_trainloader()
        self.val_loader = self.det_data_loader.get_valloader()

        self.det_loss = self.det_loss_manager.get_det_loss('yolov3_loss')

    def _get_parameters(self):
        lr_1 = []
        lr_10 = []
        params_dict = dict(self.det_net.named_parameters())
        for key, value in params_dict.items():
            if 'backbone.' not in key:
                lr_10.append(value)
            else:
                lr_1.append(value)

        params = [{
            'params': lr_1,
            'lr': self.configer.get('lr', 'base_lr')
        }, {
            'params': lr_10,
            'lr': self.configer.get('lr', 'base_lr') * 10.
        }]

        return params

    def warm_lr(self, batch_len):
        """Sets the learning rate
        # Adapted from PyTorch Imagenet example:
        # https://github.com/pytorch/examples/blob/master/imagenet/main.py
        """
        warm_iters = self.configer.get('lr', 'warm')['warm_epoch'] * batch_len
        if self.configer.get('iters') < warm_iters:
            lr_ratio = (self.configer.get('iters') + 1) / warm_iters

            base_lr_list = self.scheduler.get_lr()
            for param_group, base_lr in zip(self.optimizer.param_groups,
                                            base_lr_list):
                param_group['lr'] = base_lr * lr_ratio

            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info('LR: {}'.format([
                    param_group['lr']
                    for param_group in self.optimizer.param_groups
                ]))

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.det_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        # data_tuple: (inputs, heatmap, maskmap, vecmap)
        for i, data_dict in enumerate(self.train_loader):
            if not self.configer.is_empty(
                    'lr', 'is_warm') and self.configer.get('lr', 'is_warm'):
                self.warm_lr(len(self.train_loader))

            inputs = data_dict['img']
            batch_gt_bboxes = data_dict['bboxes']
            batch_gt_labels = data_dict['labels']
            input_size = [inputs.size(3), inputs.size(2)]

            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs = self.module_utilizer.to_device(inputs)

            # Forward pass.
            feat_list, predictions, _ = self.det_net(inputs)

            targets, objmask, noobjmask = self.yolo_target_generator(
                feat_list, batch_gt_bboxes, batch_gt_labels, input_size)
            targets, objmask, noobjmask = self.module_utilizer.to_device(
                targets, objmask, noobjmask)
            # Compute the loss of the train batch & backward.
            loss = self.det_loss(predictions, targets, objmask, noobjmask)

            self.train_losses.update(loss.item(), inputs.size(0))

            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               (self.configer.get('iters')) % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.det_net.eval()
        start_time = time.time()
        with torch.no_grad():
            for i, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                batch_gt_bboxes = data_dict['bboxes']
                batch_gt_labels = data_dict['labels']
                input_size = [inputs.size(3), inputs.size(2)]
                # Forward pass.
                inputs = self.module_utilizer.to_device(inputs)
                feat_list, predictions, detections = self.det_net(inputs)

                targets, objmask, noobjmask = self.yolo_target_generator(
                    feat_list, batch_gt_bboxes, batch_gt_labels, input_size)
                targets, objmask, noobjmask = self.module_utilizer.to_device(
                    targets, objmask, noobjmask)

                # Compute the loss of the val batch.
                loss = self.det_loss(predictions, targets, objmask, noobjmask)
                self.val_losses.update(loss.item(), inputs.size(0))

                batch_detections = YOLOv3Test.decode(detections, self.configer)
                batch_pred_bboxes = self.__get_object_list(
                    batch_detections, input_size)

                self.det_running_score.update(batch_pred_bboxes,
                                              batch_gt_bboxes, batch_gt_labels)

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.module_utilizer.save_net(self.det_net, save_mode='iters')
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            Log.info('Val mAP: {}'.format(self.det_running_score.get_mAP()))
            self.det_running_score.reset()
            self.batch_time.reset()
            self.val_losses.reset()
            self.det_net.train()

    def __get_object_list(self, batch_detections, input_size):
        batch_pred_bboxes = list()
        for idx, detections in enumerate(batch_detections):
            object_list = list()
            if detections is not None:
                for x1, y1, x2, y2, conf, cls_conf, cls_pred in detections:
                    xmin = x1.cpu().item() * input_size[0]
                    ymin = y1.cpu().item() * input_size[1]
                    xmax = x2.cpu().item() * input_size[0]
                    ymax = y2.cpu().item() * input_size[1]
                    cf = conf.cpu().item()
                    cls_pred = cls_pred.cpu().item()
                    object_list.append([
                        xmin, ymin, xmax, ymax,
                        int(cls_pred),
                        float('%.2f' % cf)
                    ])

            batch_pred_bboxes.append(object_list)

        return batch_pred_bboxes

    def train(self):
        cudnn.benchmark = True
        if self.configer.get('network',
                             'resume') is not None and self.configer.get(
                                 'network', 'resume_val'):
            self.__val()

        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break
Ejemplo n.º 18
0
class ImageTranslator(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.model_manager = ModelManager(configer)
        self.seg_data_loader = DataLoader(configer)

        self.gan_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()

    def _init_model(self):
        self.gan_net = self.model_manager.gan_model()
        self.gan_net = RunnerHelper.load_net(self, self.gan_net)

        self.optimizer_G, self.scheduler_G = Trainer.init(
            self._get_parameters()[0], self.configer.get('solver'))
        self.optimizer_D, self.scheduler_D = Trainer.init(
            self._get_parameters()[1], self.configer.get('solver'))

        self.train_loader = self.seg_data_loader.get_trainloader()
        self.val_loader = self.seg_data_loader.get_valloader()

    def _get_parameters(self):
        params_G = []
        params_D = []
        params_dict = dict(self.gan_net.named_parameters())
        for key, value in params_dict.items():
            if 'G' not in key:
                params_D.append(value)
            else:
                params_G.append(value)

        return params_G, params_D

    def train(self):
        """
          Train function of every epoch during train phase.
        """
        self.gan_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.scheduler_G.step(self.runner_state['epoch'])
        self.scheduler_D.step(self.runner_state['epoch'])
        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['imgA']
            self.data_time.update(time.time() - start_time)

            # Forward pass.
            out_dict = self.gan_net(data_dict)
            # outputs = self.module_utilizer.gather(outputs)
            self.optimizer_G.zero_grad()
            loss_G = out_dict['loss_G'].mean()
            loss_G.backward()
            self.optimizer_G.step()

            self.optimizer_D.zero_grad()
            loss_D = out_dict['loss_D'].mean()
            loss_D.backward()
            self.optimizer_D.step()
            loss = loss_G + loss_D
            self.train_losses.update(loss.item(), inputs.size(0))

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.runner_state['iters'] += 1

            # Print the log info & reset the states.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.runner_state['epoch'],
                            self.runner_state['iters'],
                            self.configer.get('solver', 'display_iter'), [
                                RunnerHelper.get_lr(self.optimizer_G),
                                RunnerHelper.get_lr(self.optimizer_D)
                            ],
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            if self.configer.get('solver', 'lr')['metric'] == 'iters' \
                    and self.runner_state['iters'] == self.configer.get('solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'test_interval') == 0:
                self.val()

        self.runner_state['epoch'] += 1

    def val(self, data_loader=None):
        """
          Validation function during the train phase.
        """
        self.gan_net.eval()
        start_time = time.time()

        data_loader = self.val_loader if data_loader is None else data_loader
        for j, data_dict in enumerate(data_loader):
            inputs = data_dict['imgA']

            with torch.no_grad():
                # Forward pass.
                out_dict = self.gan_net(data_dict)
                # Compute the loss of the val batch.

            self.val_losses.update(
                out_dict['loss_G'].mean().item() +
                out_dict['loss_D'].mean().item(), inputs.size(0))
            # Update the vars of the val phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()

        RunnerHelper.save_net(self, self.gan_net, val_loss=self.val_losses.avg)

        # Print the log info & reset the states.
        Log.info('Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                 'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                                loss=self.val_losses))
        self.batch_time.reset()
        self.val_losses.reset()
        self.gan_net.train()
Ejemplo n.º 19
0
class ImageClassifier(object):
    """
      The class for the training phase of Image classification.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.cls_model_manager = ModelManager(configer)
        self.cls_data_loader = DataLoader(configer)
        self.cls_running_score = ClsRunningScore(configer)

        self.cls_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()

    def _init_model(self):
        self.cls_net = self.cls_model_manager.get_cls_model()
        self.cls_net = RunnerHelper.load_net(self, self.cls_net)
        self.optimizer, self.scheduler = Trainer.init(self._get_parameters(), self.configer.get('solver'))

        self.train_loader = self.cls_data_loader.get_trainloader()
        self.val_loader = self.cls_data_loader.get_valloader()

        self.ce_loss = self.cls_model_manager.get_cls_loss()

    def _get_parameters(self):

        return self.cls_net.parameters()

    def train(self):
        """
          Train function of every epoch during train phase.
        """
        self.cls_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.runner_state['epoch'] += 1

        for i, data_dict in enumerate(self.train_loader):
            Trainer.update(self, solver_dict=self.configer.get('solver'))
            self.data_time.update(time.time() - start_time)
            # Forward pass.
            out_dict = self.cls_net(data_dict)
            # Compute the loss of the train batch & backward.

            loss = self.ce_loss(out_dict, data_dict, gathered=self.configer.get('network', 'gathered'))

            self.train_losses.update(loss.item(), len(DCHelper.tolist(data_dict['meta'])))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.runner_state['iters'] += 1

            # Print the log info & reset the states.
            if self.runner_state['iters'] % self.configer.get('solver', 'display_iter') == 0:
                Log.info('Train Epoch: {0}\tTrain Iteration: {1}\t'
                         'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                         'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                         'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'.format(
                    self.runner_state['epoch'], self.runner_state['iters'],
                    self.configer.get('solver', 'display_iter'),
                    RunnerHelper.get_lr(self.optimizer), batch_time=self.batch_time,
                    data_time=self.data_time, loss=self.train_losses))

                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            if self.configer.get('solver', 'lr')['metric'] == 'iters' \
                    and self.runner_state['iters'] == self.configer.get('solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.runner_state['iters'] % self.configer.get('solver', 'test_interval') == 0:
                self.val()

    def val(self):
        """
          Validation function during the train phase.
        """
        self.cls_net.eval()
        start_time = time.time()

        with torch.no_grad():
            for j, data_dict in enumerate(self.val_loader):
                # Forward pass.
                out_dict = self.cls_net(data_dict)
                # Compute the loss of the val batch.
                loss = self.ce_loss(out_dict, data_dict, gathered=self.configer.get('network', 'gathered'))
                out_dict = RunnerHelper.gather(self, out_dict)
                self.cls_running_score.update(out_dict['out'], DCHelper.tolist(data_dict['labels']))
                self.val_losses.update(loss.item(), len(DCHelper.tolist(data_dict['meta'])))

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            RunnerHelper.save_net(self, self.cls_net, performance=self.cls_running_score.get_top1_acc())
            self.runner_state['performance'] = self.cls_running_score.get_top1_acc()
            # Print the log info & reset the states.
            Log.info('Test Time {batch_time.sum:.3f}s'.format(batch_time=self.batch_time))
            Log.info('TestLoss = {loss.avg:.8f}'.format(loss=self.val_losses))
            Log.info('Top1 ACC = {}'.format(self.cls_running_score.get_top1_acc()))
            Log.info('Top5 ACC = {}'.format(self.cls_running_score.get_top5_acc()))
            self.batch_time.reset()
            self.val_losses.reset()
            self.cls_running_score.reset()
            self.cls_net.train()
Ejemplo n.º 20
0
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.train_loss_heatmap = AverageMeter()
        self.train_loss_associate = AverageMeter()
        self.val_losses = AverageMeter()
        self.val_loss_heatmap = AverageMeter()
        self.val_loss_associate = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = PoseLossManager(configer)
        self.pose_model_manager = PoseModelManager(configer)
        self.pose_data_loader = PoseDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)
        self.heatmap_generator = HeatmapGenerator(configer)
        self.paf_generator = PafGenerator(configer)
        self.data_transformer = DataTransformer(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()
Ejemplo n.º 21
0
class FaceGAN(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.model_manager = ModelManager(configer)
        self.seg_data_loader = DataLoader(configer)

        self.gan_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None
        self.runner_state = dict()

        self._init_model()

    def _init_model(self):
        self.gan_net = self.model_manager.gan_model()
        self.gan_net = RunnerHelper.load_net(self, self.gan_net)

        self.optimizer, self.scheduler = Trainer.init(
            self._get_parameters(), self.configer.get('solver'))

        self.train_loader = self.seg_data_loader.get_trainloader()
        self.val_loader = self.seg_data_loader.get_valloader()

    def _get_parameters(self):

        return self.gan_net.parameters()

    def train(self):
        """
          Train function of every epoch during train phase.
        """
        self.gan_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        for i, data_dict in enumerate(self.train_loader):
            Trainer.update(self, solver_dict=self.configer.get('solver'))
            inputs = data_dict['imgA']
            self.data_time.update(time.time() - start_time)

            # Forward pass.
            out_dict = self.gan_net(inputs)
            # outputs = self.module_utilizer.gather(outputs)
            loss = out_dict['loss'].mean()
            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.runner_state['iters'] += 1

            # Print the log info & reset the states.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.runner_state['epoch'],
                            self.runner_state['iters'],
                            self.configer.get('solver', 'display_iter'),
                            RunnerHelper.get_lr(self.optimizer),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            if self.configer.get('solver', 'lr')['metric'] == 'iters' \
                    and self.runner_state['iters'] == self.configer.get('solver', 'max_iters'):
                break

            # Check to val the current model.
            if self.runner_state['iters'] % self.configer.get(
                    'solver', 'test_interval') == 0:
                self.val()

        self.runner_state['epoch'] += 1

    def val(self, data_loader=None):
        """
          Validation function during the train phase.
        """
        self.gan_net.eval()
        start_time = time.time()

        data_loader = self.val_loader if data_loader is None else data_loader
        for j, data_dict in enumerate(data_loader):
            inputs = data_dict['imgA']

            with torch.no_grad():
                # Forward pass.
                out_dict = self.gan_net(data_dict)
                # Compute the loss of the val batch.

            self.val_losses.update(out_dict['loss'].mean().item(),
                                   inputs.size(0))
            meta_list = DCHelper.tolist(data_dict['meta'])
            probe_features = []
            gallery_features = []
            probe_labels = []
            gallery_labels = []
            for idx in range(len(meta_list)):
                gallery_features.append(out_dict['featB'][idx].cpu().numpy())
                gallery_labels.append(meta_list[idx]['labelB'])
                probe_features.append(out_dict['featA'][idx].cpu().numpy())
                probe_labels.append(meta_list[idx]['labelA'])

            rank_1, vr_far_001 = FaceGANTest.decode(probe_features,
                                                    gallery_features,
                                                    probe_labels,
                                                    gallery_labels)
            Log.info('Rank1 accuracy is {}'.format(rank_1))
            Log.info('VR@FAR=0.1% accuracy is {}'.format(vr_far_001))
            # Update the vars of the val phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()

        RunnerHelper.save_net(self, self.gan_net, val_loss=self.val_losses.avg)

        # Print the log info & reset the states.
        Log.info('Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                 'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                                loss=self.val_losses))
        self.batch_time.reset()
        self.val_losses.reset()
        self.gan_net.train()
Ejemplo n.º 22
0
class FCClassifier(object):
    """
      The class for the training phase of Image classification.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.cls_loss_manager = ClsLossManager(configer)
        self.cls_model_manager = ClsModelManager(configer)
        self.cls_data_loader = ClsDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)
        self.cls_running_score = ClsRunningScore(configer)

        self.cls_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.cls_net = self.cls_model_manager.image_classifier()
        self.cls_net = self.module_utilizer.load_net(self.cls_net)
        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.cls_data_loader.get_trainloader()
        self.val_loader = self.cls_data_loader.get_valloader()

        self.ce_loss = self.cls_loss_manager.get_cls_loss('cross_entropy_loss')

    def _get_parameters(self):

        return self.cls_net.parameters()

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.cls_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['img']
            labels = data_dict['label']
            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs, labels = self.module_utilizer.to_device(inputs, labels)
            # Forward pass.
            outputs = self.cls_net(inputs)
            outputs = self.module_utilizer.gather(outputs)
            # Compute the loss of the train batch & backward.

            loss = self.ce_loss(outputs, labels)

            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))

                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               self.configer.get('iters') % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.cls_net.eval()
        start_time = time.time()

        with torch.no_grad():
            for j, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                labels = data_dict['label']
                # Change the data type.
                inputs, labels = self.module_utilizer.to_device(inputs, labels)
                # Forward pass.
                outputs = self.cls_net(inputs)
                outputs = self.module_utilizer.gather(outputs)
                # Compute the loss of the val batch.
                loss = self.ce_loss(outputs, labels)
                self.cls_running_score.update(outputs, labels)
                self.val_losses.update(loss.item(), inputs.size(0))

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.module_utilizer.save_net(self.cls_net, save_mode='iters')

            # Print the log info & reset the states.
            Log.info('Test Time {batch_time.sum:.3f}s'.format(
                batch_time=self.batch_time))
            Log.info('TestLoss = {loss.avg:.8f}'.format(loss=self.val_losses))
            Log.info('Top1 ACC = {}'.format(
                self.cls_running_score.get_top1_acc()))
            Log.info('Top5 ACC = {}'.format(
                self.cls_running_score.get_top5_acc()))
            self.batch_time.reset()
            self.val_losses.reset()
            self.cls_running_score.reset()
            self.cls_net.train()

    def train(self):
        cudnn.benchmark = True
        if self.configer.get('network',
                             'resume') is not None and self.configer.get(
                                 'network', 'resume_val'):
            self.__val()

        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break
Ejemplo n.º 23
0
class OpenPose(object):
    """
      The class for Pose Estimation. Include train, val, test & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.train_loss_heatmap = AverageMeter()
        self.train_loss_associate = AverageMeter()
        self.val_losses = AverageMeter()
        self.val_loss_heatmap = AverageMeter()
        self.val_loss_associate = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = PoseLossManager(configer)
        self.pose_model_manager = PoseModelManager(configer)
        self.pose_data_loader = PoseDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)
        self.heatmap_generator = HeatmapGenerator(configer)
        self.paf_generator = PafGenerator(configer)
        self.data_transformer = DataTransformer(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.pose_net = self.pose_model_manager.multi_pose_detector()
        self.pose_net = self.module_utilizer.load_net(self.pose_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.pose_data_loader.get_trainloader()
        self.val_loader = self.pose_data_loader.get_valloader()

        self.weights = self.configer.get('network', 'loss_weights')
        self.mse_loss = self.pose_loss_manager.get_pose_loss('mse_loss')

    def _get_parameters(self):
        lr_1 = []
        lr_2 = []
        lr_4 = []
        lr_8 = []
        params_dict = dict(self.pose_net.named_parameters())
        for key, value in params_dict.items():
            if ('model1_' not in key) and ('model0.'
                                           not in key) and ('backbone.'
                                                            not in key):
                if key[-4:] == 'bias':
                    lr_8.append(value)
                else:
                    lr_4.append(value)
            elif key[-4:] == 'bias':
                lr_2.append(value)
            else:
                lr_1.append(value)

        params = [{
            'params': lr_1,
            'lr': self.configer.get('lr', 'base_lr')
        }, {
            'params': lr_2,
            'lr': self.configer.get('lr', 'base_lr') * 2.,
            'weight_decay': 0.0
        }, {
            'params': lr_4,
            'lr': self.configer.get('lr', 'base_lr') * 4.
        }, {
            'params': lr_8,
            'lr': self.configer.get('lr', 'base_lr') * 8.,
            'weight_decay': 0.0
        }]

        return params

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.pose_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        # data_tuple: (inputs, heatmap, maskmap, vecmap)
        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['img']
            maskmap = data_dict['maskmap']
            input_size = [inputs.size(3), inputs.size(2)]
            heatmap = self.heatmap_generator(data_dict['kpts'],
                                             input_size,
                                             maskmap=maskmap)
            vecmap = self.paf_generator(data_dict['kpts'],
                                        input_size,
                                        maskmap=maskmap)

            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs, heatmap, maskmap, vecmap = self.module_utilizer.to_device(
                inputs, heatmap, maskmap, vecmap)

            # Forward pass.
            paf_out, heatmap_out = self.pose_net(inputs)

            # Compute the loss of the train batch & backward.
            loss_heatmap = self.mse_loss(heatmap_out,
                                         heatmap,
                                         mask=maskmap,
                                         weights=self.weights)
            loss_associate = self.mse_loss(paf_out,
                                           vecmap,
                                           mask=maskmap,
                                           weights=self.weights)
            loss = loss_heatmap + loss_associate

            self.train_losses.update(loss.item(), inputs.size(0))
            self.train_loss_heatmap.update(loss_heatmap.item(), inputs.size(0))
            self.train_loss_associate.update(loss_associate.item(),
                                             inputs.size(0))

            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info('Loss Heatmap:{}, Loss Asso: {}'.format(
                    self.train_loss_heatmap.avg,
                    self.train_loss_associate.avg))
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()
                self.train_loss_heatmap.reset()
                self.train_loss_associate.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               self.configer.get('iters') % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.pose_net.eval()
        start_time = time.time()

        with torch.no_grad():
            for i, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                maskmap = data_dict['maskmap']
                input_size = [inputs.size(3), inputs.size(2)]
                heatmap = self.heatmap_generator(data_dict['kpts'],
                                                 input_size,
                                                 maskmap=maskmap)
                vecmap = self.paf_generator(data_dict['kpts'],
                                            input_size,
                                            maskmap=maskmap)
                # Change the data type.
                inputs, heatmap, maskmap, vecmap = self.module_utilizer.to_device(
                    inputs, heatmap, maskmap, vecmap)

                # Forward pass.
                paf_out, heatmap_out = self.pose_net(inputs)
                # Compute the loss of the val batch.
                loss_heatmap = self.mse_loss(heatmap_out[-1], heatmap, maskmap)
                loss_associate = self.mse_loss(paf_out[-1], vecmap, maskmap)
                loss = loss_heatmap + loss_associate

                self.val_losses.update(loss.item(), inputs.size(0))
                self.val_loss_heatmap.update(loss_heatmap.item(),
                                             inputs.size(0))
                self.val_loss_associate.update(loss_associate.item(),
                                               inputs.size(0))

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.module_utilizer.save_net(self.pose_net, save_mode='iters')
            Log.info('Loss Heatmap:{}, Loss Asso: {}'.format(
                self.val_loss_heatmap.avg, self.val_loss_associate.avg))
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            self.batch_time.reset()
            self.val_losses.reset()
            self.val_loss_heatmap.reset()
            self.val_loss_associate.reset()
            self.pose_net.train()

    def train(self):
        cudnn.benchmark = True
        if self.configer.get('network',
                             'resume') is not None and self.configer.get(
                                 'network', 'resume_val'):
            self.__val()

        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break
Ejemplo n.º 24
0
class FCNSegmentor(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.seg_running_score = SegRunningScore(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_loss_manager = SegLossManager(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = SegDataLoader(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.seg_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

    def init_model(self):
        self.seg_net = self.seg_model_manager.semantic_segmentor()
        self.seg_net = self.module_utilizer.load_net(self.seg_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.seg_data_loader.get_trainloader()
        self.val_loader = self.seg_data_loader.get_valloader()

        self.pixel_loss = self.seg_loss_manager.get_seg_loss(
            'cross_entropy_loss')

    def _get_parameters(self):

        return self.seg_net.parameters()

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        if self.configer.get(
                'network',
                'resume') is not None and self.configer.get('iters') == 0:
            self.__val()

        self.seg_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        for i, (inputs, targets) in enumerate(self.train_loader):
            self.data_time.update(time.time() - start_time)
            # Change the data type.

            inputs, targets = self.module_utilizer.to_device(inputs, targets)

            # Forward pass.
            outputs = self.seg_net(inputs)

            # Compute the loss of the train batch & backward.
            loss = self.pixel_loss(outputs, targets)
            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               self.configer.get('iters') % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.seg_net.eval()
        start_time = time.time()
        with torch.no_grad():
            for j, (inputs, targets) in enumerate(self.val_loader):
                # Change the data type.
                inputs, targets = self.module_utilizer.to_device(
                    inputs, targets)
                # Forward pass.
                outputs = self.seg_net(inputs)
                # Compute the loss of the val batch.
                loss = self.pixel_loss(outputs, targets)

                self.val_losses.update(loss.item(), inputs.size(0))
                self.seg_running_score.update(
                    outputs.max(1)[1].unsqueeze(1).data, targets.data)

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.configer.update_value(['performace'],
                                       self.seg_running_score.get_mean_iou())
            self.configer.update_value(['val_loss'], self.val_losses.avg)
            self.module_utilizer.save_net(self.seg_net, metric='performance')
            self.module_utilizer.save_net(self.seg_net, metric='val_loss')

            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            Log.info('Mean IOU: {}'.format(
                self.seg_running_score.get_mean_iou()))
            self.batch_time.reset()
            self.val_losses.reset()
            self.seg_running_score.reset()
            self.seg_net.train()

    def train(self):
        cudnn.benchmark = True
        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break
Ejemplo n.º 25
0
class ClsRunningScore(object):
    def __init__(self, configer):
        self.configer = configer
        self.top1_acc = AverageMeter()
        self.top3_acc = AverageMeter()
        self.top5_acc = AverageMeter()

    def get_top1_acc(self):
        return self.top1_acc.avg

    def get_top3_acc(self):
        return self.top3_acc.avg

    def get_top5_acc(self):
        return self.top5_acc.avg

    def update(self, output, target):
        """Computes the precision@k for the specified values of k"""
        topk = (1, 3, 5)
        maxk = max(topk)
        batch_size = target.size(0)

        _, pred = output.topk(maxk, 1, True, True)
        pred = pred.t()
        correct = pred.eq(target.view(1, -1).expand_as(pred))
        res = []
        for k in topk:
            correct_k = correct[:k].view(-1).float().sum(0, keepdim=False)
            res.append(correct_k / batch_size)

        self.top1_acc.update(res[0].item(), batch_size)
        self.top3_acc.update(res[1].item(), batch_size)
        self.top5_acc.update(res[2].item(), batch_size)

    def reset(self):
        self.top1_acc.reset()
        self.top3_acc.reset()
        self.top5_acc.reset()
Ejemplo n.º 26
0
class ConvPoseMachine(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = PoseLossManager(configer)
        self.pose_model_manager = PoseModelManager(configer)
        self.pose_data_loader = PoseDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)
        self.data_transformer = DataTransformer(configer)
        self.heatmap_generator = HeatmapGenerator(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.pose_net = self.pose_model_manager.single_pose_detector()
        self.pose_net = self.module_utilizer.load_net(self.pose_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(self._get_parameters())

        self.train_loader = self.pose_data_loader.get_trainloader()
        self.val_loader = self.pose_data_loader.get_valloader()

        self.mse_loss = self.pose_loss_manager.get_pose_loss('mse_loss')

    def _get_parameters(self):

        return self.pose_net.parameters()

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.pose_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        # data_tuple: (inputs, heatmap, maskmap, tagmap, num_objects)
        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['img']
            input_size = [inputs.size(3), inputs.size(2)]
            heatmap = self.heatmap_generator(data_dict['kpts'], input_size)

            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs, heatmap = self.module_utilizer.to_device(inputs, heatmap)
            # self.pose_visualizer.vis_peaks(heatmap[0], inputs[0], name='cpm')

            # Forward pass.
            outputs = self.pose_net(inputs)

            # Compute the loss of the train batch & backward.
            loss = self.mse_loss(outputs, heatmap, maskmap)

            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get('solver', 'display_iter') == 0:
                Log.info('Train Epoch: {0}\tTrain Iteration: {1}\t'
                         'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                         'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                         'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'.format(
                    self.configer.get('epoch'), self.configer.get('iters'),
                    self.configer.get('solver', 'display_iter'),
                    self.scheduler.get_lr(), batch_time=self.batch_time,
                    data_time=self.data_time, loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               self.configer.get('iters') % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.pose_net.eval()
        start_time = time.time()

        with torch.no_grad():
            for j, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                input_size = [inputs.size(3), inputs.size(2)]
                heatmap = self.heatmap_generator(data_dict['kpts'], input_size)
                # Change the data type.
                inputs, heatmap = self.module_utilizer.to_device(inputs, heatmap)

                # Forward pass.
                outputs = self.pose_net(inputs)

                # Compute the loss of the val batch.
                loss = self.mse_loss(outputs[-1], heatmap)

                self.val_losses.update(loss.item(), inputs.size(0))

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.module_utilizer.save_net(self.pose_net, save_mode='iters')
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(
                    batch_time=self.batch_time, loss=self.val_losses))
            self.batch_time.reset()
            self.val_losses.reset()
            self.pose_net.train()

    def train(self):
        cudnn.benchmark = True
        if self.configer.get('network', 'resume') is not None and self.configer.get('network', 'resume_val'):
            self.__val()

        while self.configer.get('epoch') < self.configer.get('solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get('solver', 'max_epoch'):
                break
Ejemplo n.º 27
0
class FasterRCNN(object):
    """
      The class for Single Shot Detector. Include train, val, test & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.det_visualizer = DetVisualizer(configer)
        self.det_loss_manager = DetLossManager(configer)
        self.det_model_manager = DetModelManager(configer)
        self.det_data_loader = DetDataLoader(configer)
        self.fr_priorbox_layer = FRPriorBoxLayer(configer)
        self.rpn_target_generator = RPNTargetGenerator(configer)
        self.det_running_score = DetRunningScore(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.det_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.det_net = self.det_model_manager.object_detector()
        self.det_net = self.module_utilizer.load_net(self.det_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.det_data_loader.get_trainloader()
        self.val_loader = self.det_data_loader.get_valloader()

        self.fr_loss = self.det_loss_manager.get_det_loss('fr_loss')

    def _get_parameters(self):
        lr_1 = []
        lr_2 = []
        params_dict = dict(self.det_net.named_parameters())
        for key, value in params_dict.items():
            if value.requires_grad:
                if 'bias' in key:
                    lr_2.append(value)
                else:
                    lr_1.append(value)

        params = [{
            'params': lr_1,
            'lr': self.configer.get('lr', 'base_lr')
        }, {
            'params': lr_2,
            'lr': self.configer.get('lr', 'base_lr') * 2.,
            'weight_decay': 0
        }]
        return params

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.det_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['img']
            img_scale = data_dict['imgscale']
            batch_gt_bboxes = data_dict['bboxes']
            batch_gt_labels = data_dict['labels']
            self.data_time.update(time.time() - start_time)
            # Change the data type.
            gt_bboxes, gt_nums, gt_labels = self.__make_tensor(
                batch_gt_bboxes, batch_gt_labels)

            gt_bboxes, gt_num, gt_labels = self.module_utilizer.to_device(
                gt_bboxes, gt_nums, gt_labels)
            inputs = self.module_utilizer.to_device(inputs)
            # Forward pass.
            feat_list, train_group = self.det_net(inputs, gt_bboxes, gt_num,
                                                  gt_labels, img_scale)
            gt_rpn_locs, gt_rpn_labels = self.rpn_target_generator(
                feat_list, batch_gt_bboxes,
                [inputs.size(3), inputs.size(2)])
            gt_rpn_locs, gt_rpn_labels = self.module_utilizer.to_device(
                gt_rpn_locs, gt_rpn_labels)

            rpn_locs, rpn_scores, sample_roi_locs, sample_roi_scores, gt_roi_bboxes, gt_roi_labels = train_group

            # Compute the loss of the train batch & backward.
            loss = self.fr_loss(
                [rpn_locs, rpn_scores, sample_roi_locs, sample_roi_scores],
                [gt_rpn_locs, gt_rpn_labels, gt_roi_bboxes, gt_roi_labels])

            self.train_losses.update(loss.item(), inputs.size(0))

            self.optimizer.zero_grad()
            loss.backward()
            self.module_utilizer.clip_grad(self.det_net, 10.)
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               (self.configer.get('iters')) % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.det_net.eval()
        start_time = time.time()
        with torch.no_grad():
            for j, data_dict in enumerate(self.val_loader):
                inputs = data_dict['img']
                img_scale = data_dict['imgscale']
                batch_gt_bboxes = data_dict['bboxes']
                batch_gt_labels = data_dict['labels']
                # Change the data type.
                gt_bboxes, gt_nums, gt_labels = self.__make_tensor(
                    batch_gt_bboxes, batch_gt_labels)
                gt_bboxes, gt_num, gt_labels = self.module_utilizer.to_device(
                    gt_bboxes, gt_nums, gt_labels)
                inputs = self.module_utilizer.to_device(inputs)

                # Forward pass.
                feat_list, train_group, test_group = self.det_net(
                    inputs, gt_bboxes, gt_nums, gt_labels, img_scale)
                rpn_locs, rpn_scores, sample_roi_locs, sample_roi_scores, gt_roi_bboxes, gt_roi_labels = train_group

                gt_rpn_locs, gt_rpn_labels = self.rpn_target_generator(
                    feat_list, batch_gt_bboxes,
                    [inputs.size(3), inputs.size(2)])
                gt_rpn_locs, gt_rpn_labels = self.module_utilizer.to_device(
                    gt_rpn_locs, gt_rpn_labels)

                # Compute the loss of the train batch & backward.
                loss = self.fr_loss(
                    [rpn_locs, rpn_scores, sample_roi_locs, sample_roi_scores],
                    [gt_rpn_locs, gt_rpn_labels, gt_roi_bboxes, gt_roi_labels])

                self.val_losses.update(loss.item(), inputs.size(0))
                test_indices_and_rois, test_roi_locs, test_roi_scores, test_rois_num = test_group
                batch_detections = FastRCNNTest.decode(
                    test_roi_locs, test_roi_scores, test_indices_and_rois,
                    test_rois_num, self.configer,
                    [inputs.size(3), inputs.size(2)])
                batch_pred_bboxes = self.__get_object_list(batch_detections)
                self.det_running_score.update(batch_pred_bboxes,
                                              batch_gt_bboxes, batch_gt_labels)

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.module_utilizer.save_net(self.det_net, save_mode='iters')
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            Log.info('Val mAP: {}\n'.format(self.det_running_score.get_mAP()))
            self.det_running_score.reset()
            self.batch_time.reset()
            self.val_losses.reset()
            self.det_net.train()

    def __make_tensor(self, gt_bboxes, gt_labels):
        len_arr = [gt_labels[i].numel() for i in range(len(gt_bboxes))]
        batch_maxlen = max(max(len_arr), 1)
        target_bboxes = torch.zeros((len(gt_bboxes), batch_maxlen, 4)).float()
        target_labels = torch.zeros((len(gt_bboxes), batch_maxlen)).long()
        for i in range(len(gt_bboxes)):
            if len_arr[i] == 0:
                continue

            target_bboxes[i, :len_arr[i], :] = gt_bboxes[i].clone()
            target_labels[i, :len_arr[i]] = gt_labels[i].clone()

        target_bboxes_num = torch.Tensor(len_arr).long()
        return target_bboxes, target_bboxes_num, target_labels

    def __get_object_list(self, batch_detections):
        batch_pred_bboxes = list()
        for idx, detections in enumerate(batch_detections):
            object_list = list()
            if detections is not None:
                for x1, y1, x2, y2, conf, cls_pred in detections:
                    xmin = x1.cpu().item()
                    ymin = y1.cpu().item()
                    xmax = x2.cpu().item()
                    ymax = y2.cpu().item()
                    cf = conf.cpu().item()
                    cls_pred = int(cls_pred.cpu().item()) - 1
                    object_list.append(
                        [xmin, ymin, xmax, ymax, cls_pred,
                         float('%.2f' % cf)])

            batch_pred_bboxes.append(object_list)

        return batch_pred_bboxes

    def train(self):
        cudnn.benchmark = True
        if self.configer.get('network',
                             'resume') is not None and self.configer.get(
                                 'network', 'resume_val'):
            self.__val()

        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break
Ejemplo n.º 28
0
 def __init__(self, configer):
     self.configer = configer
     self.top1_acc = AverageMeter()
     self.top3_acc = AverageMeter()
     self.top5_acc = AverageMeter()
Ejemplo n.º 29
0
class RPNPose(object):
    """
      The class for Pose Estimation. Include train, val, test & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.val_loss_heatmap = AverageMeter()
        self.val_loss_associate = AverageMeter()
        self.pose_visualizer = PoseVisualizer(configer)
        self.pose_loss_manager = PoseLossManager(configer)
        self.pose_model_manager = PoseModelManager(configer)
        self.pose_data_loader = PoseDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.pose_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

    def init_model(self):
        self.pose_net = self.pose_model_manager.multi_pose_detector()
        self.pose_net = self.module_utilizer.load_net(self.pose_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.pose_data_loader.get_trainloader()
        self.val_loader = self.pose_data_loader.get_valloader()

        self.mse_loss = self.pose_loss_manager.get_pose_loss('mse_loss')
        self.embeding_loss = self.pose_loss_manager.get_pose_loss(
            'embedding_loss')

    def _get_parameters(self):

        return self.pose_net.parameters()

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.pose_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.
        self.configer.plus_one('epoch')
        self.scheduler.step(self.configer.get('epoch'))

        # data_tuple: (inputs, heatmap, maskmap, vecmap)
        for i, (inputs, label, heatmap, maskmap, vecmap, tagmap,
                num_objects) in enumerate(self.train_loader):
            self.data_time.update(time.time() - start_time)
            # Change the data type.
            inputs, label, heatmap, maskmap, vecmap, tagmap = self.module_utilizer.to_device(
                inputs, label, heatmap, maskmap, vecmap, tagmap)

            # Forward pass.
            paf_out, heatmap_out, embed_out = self.pose_net(inputs)
            # Compute the loss of the train batch & backward.

            loss_label = self.mse_loss(embed_out.sum(1).squeeze(), label)
            loss_heatmap = self.mse_loss(heatmap_out, heatmap, maskmap)
            loss_paf = self.mse_loss(paf_out, vecmap, maskmap)
            loss_associate = self.embeding_loss(embed_out, tagmap, num_objects)
            loss = loss_label + loss_heatmap + loss_paf + loss_associate

            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               self.configer.get('iters') % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.pose_net.eval()
        start_time = time.time()

        with torch.no_grad():
            for j, (inputs, label, heatmap, maskmap, vecmap, tagmap,
                    num_objects) in enumerate(self.val_loader):
                # Change the data type.
                inputs, label, heatmap, maskmap, vecmap, tagmap = self.module_utilizer.to_device(
                    inputs, label, heatmap, maskmap, vecmap, tagmap)

                # Forward pass.
                paf_out, heatmap_out, embed_out = self.pose_net(inputs)
                # Compute the loss of the val batch.
                loss_label = self.mse_loss(embed_out, label)
                loss_heatmap = self.mse_loss(heatmap_out, heatmap, maskmap)
                loss_paf = self.mse_loss(paf_out, vecmap, maskmap)
                loss_associate = self.embeding_loss(embed_out, tagmap,
                                                    num_objects)
                loss = loss_label + loss_heatmap + loss_paf + loss_associate

                self.val_losses.update(loss.item(), inputs.size(0))
                self.val_loss_heatmap.update(loss_heatmap.item(),
                                             inputs.size(0))
                self.val_loss_associate.update(loss_associate.item(),
                                               inputs.size(0))

                # Update the vars of the val phase.
                self.batch_time.update(time.time() - start_time)
                start_time = time.time()

            self.module_utilizer.save_net(self.pose_net, metric='iters')
            Log.info('Loss Heatmap:{}, Loss Asso: {}'.format(
                self.val_loss_heatmap.avg, self.val_loss_associate.avg))
            # Print the log info & reset the states.
            Log.info(
                'Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                               loss=self.val_losses))
            self.batch_time.reset()
            self.val_losses.reset()
            self.pose_net.train()

    def train(self):
        cudnn.benchmark = True
        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break
Ejemplo n.º 30
0
class FCNSegmentor(object):
    """
      The class for Pose Estimation. Include train, val, val & predict.
    """
    def __init__(self, configer):
        self.configer = configer
        self.batch_time = AverageMeter()
        self.data_time = AverageMeter()
        self.train_losses = AverageMeter()
        self.val_losses = AverageMeter()
        self.seg_running_score = SegRunningScore(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_loss_manager = SegLossManager(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.data_transformer = DataTransformer(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = SegDataLoader(configer)
        self.optim_scheduler = OptimScheduler(configer)

        self.seg_net = None
        self.train_loader = None
        self.val_loader = None
        self.optimizer = None
        self.scheduler = None

        self._init_model()

    def _init_model(self):
        self.seg_net = self.seg_model_manager.semantic_segmentor()
        self.seg_net = self.module_utilizer.load_net(self.seg_net)

        self.optimizer, self.scheduler = self.optim_scheduler.init_optimizer(
            self._get_parameters())

        self.train_loader = self.seg_data_loader.get_trainloader()
        self.val_loader = self.seg_data_loader.get_valloader()

        self.pixel_loss = self.seg_loss_manager.get_seg_loss('fcn_seg_loss')

        if self.configer.get('network', 'bn_type') == 'syncbn':
            self.pixel_loss = DataParallelCriterion(self.pixel_loss).cuda()

    def _get_parameters(self):
        lr_1 = []
        lr_10 = []
        params_dict = dict(self.seg_net.named_parameters())
        for key, value in params_dict.items():
            if 'backbone.' not in key:
                lr_10.append(value)
            else:
                lr_1.append(value)

        params = [{
            'params': lr_1,
            'lr': self.configer.get('lr', 'base_lr')
        }, {
            'params': lr_10,
            'lr': self.configer.get('lr', 'base_lr') * 1.0
        }]
        return params

    def __train(self):
        """
          Train function of every epoch during train phase.
        """
        self.seg_net.train()
        start_time = time.time()
        # Adjust the learning rate after every epoch.

        self.scheduler.step(self.configer.get('epoch'))

        for i, data_dict in enumerate(self.train_loader):
            inputs = data_dict['img']
            targets = data_dict['labelmap']
            self.data_time.update(time.time() - start_time)
            # Change the data type.

            inputs, targets = self.module_utilizer.to_device(inputs, targets)

            # Forward pass.
            outputs = self.seg_net(inputs)

            # Compute the loss of the train batch & backward.
            loss = self.pixel_loss(outputs, targets)
            self.train_losses.update(loss.item(), inputs.size(0))
            self.optimizer.zero_grad()
            loss.backward()
            self.optimizer.step()

            # Update the vars of the train phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()
            self.configer.plus_one('iters')

            # Print the log info & reset the states.
            if self.configer.get('iters') % self.configer.get(
                    'solver', 'display_iter') == 0:
                Log.info(
                    'Train Epoch: {0}\tTrain Iteration: {1}\t'
                    'Time {batch_time.sum:.3f}s / {2}iters, ({batch_time.avg:.3f})\t'
                    'Data load {data_time.sum:.3f}s / {2}iters, ({data_time.avg:3f})\n'
                    'Learning rate = {3}\tLoss = {loss.val:.8f} (ave = {loss.avg:.8f})\n'
                    .format(self.configer.get('epoch'),
                            self.configer.get('iters'),
                            self.configer.get('solver', 'display_iter'),
                            self.scheduler.get_lr(),
                            batch_time=self.batch_time,
                            data_time=self.data_time,
                            loss=self.train_losses))
                self.batch_time.reset()
                self.data_time.reset()
                self.train_losses.reset()

            # Check to val the current model.
            if self.val_loader is not None and \
               self.configer.get('iters') % self.configer.get('solver', 'test_interval') == 0:
                self.__val()

        self.configer.plus_one('epoch')

    def __val(self):
        """
          Validation function during the train phase.
        """
        self.seg_net.eval()
        start_time = time.time()

        for j, data_dict in enumerate(self.val_loader):
            inputs = data_dict['img']
            targets = data_dict['labelmap']

            with torch.no_grad():
                # Change the data type.
                inputs, targets = self.module_utilizer.to_device(
                    inputs, targets)
                # Forward pass.
                outputs = self.seg_net(inputs)
                # Compute the loss of the val batch.
                loss = self.pixel_loss(outputs, targets)

                outputs = self.module_utilizer.gather(outputs)
                pred = outputs[0]

            self.val_losses.update(loss.item(), inputs.size(0))
            self.seg_running_score.update(
                pred.max(1)[1].cpu().numpy(),
                targets.cpu().numpy())

            # Update the vars of the val phase.
            self.batch_time.update(time.time() - start_time)
            start_time = time.time()

        self.configer.update_value(['performance'],
                                   self.seg_running_score.get_mean_iou())
        self.configer.update_value(['val_loss'], self.val_losses.avg)
        self.module_utilizer.save_net(self.seg_net, save_mode='performance')
        self.module_utilizer.save_net(self.seg_net, save_mode='val_loss')

        # Print the log info & reset the states.
        Log.info('Test Time {batch_time.sum:.3f}s, ({batch_time.avg:.3f})\t'
                 'Loss {loss.avg:.8f}\n'.format(batch_time=self.batch_time,
                                                loss=self.val_losses))
        Log.info('Mean IOU: {}\n'.format(
            self.seg_running_score.get_mean_iou()))
        self.batch_time.reset()
        self.val_losses.reset()
        self.seg_running_score.reset()
        self.seg_net.train()

    def train(self):
        cudnn.benchmark = True
        if self.configer.get('network',
                             'resume') is not None and self.configer.get(
                                 'network', 'resume_val'):
            self.__val()

        while self.configer.get('epoch') < self.configer.get(
                'solver', 'max_epoch'):
            self.__train()
            if self.configer.get('epoch') == self.configer.get(
                    'solver', 'max_epoch'):
                break