Exemplo n.º 1
0
    cam, label, filename = get_id(dataset_path[i])
    dataset_cam.append(cam)
    dataset_label.append(label)
    dataset_filename.append(filename)
######################################################################
# Load Collected data Trained model
print('-------test-----------')
class_num = len(os.listdir(os.path.join(data_dir, 'train_all')))
embedding_net = ft_net(class_num)
model = SiameseNet(embedding_net)
if use_gpu:
    model.cuda()

model = load_whole_network(model, name,
                           opt.which_epoch + '_' + str(opt.net_loss_model))
model = model.eval()
if use_gpu:
    model = model.cuda()

# Extract feature
dataset_feature = []
with torch.no_grad():
    for i in range(len(dataset_list)):
        dataset_feature.append(
            extract_feature(model, dataloaders[dataset_list[i]]))

result = {
    'gallery_f': dataset_feature[0].numpy(),
    'gallery_label': dataset_label[0],
    'gallery_name': dataset_filename[0],
    'gallery_cam': dataset_cam[0],
Exemplo n.º 2
0
def loadModel(path):
    model = SiameseNet()
    model.load_state_dict(torch.load(path, map_location=torch.device('cuda')))
    model.cuda()
    model.eval()
    return model
Exemplo n.º 3
0
class Trainer(object):
    """
    Trainer encapsulates all the logic necessary for training
    the Siamese Network model.

    All hyperparameters are provided by the user in the
    config file.
    """
    def __init__(self, config, data_loader, layer_hyperparams):
        """
        Construct a new Trainer instance.

        Args
        ----
        - config: object containing command line arguments.
        - data_loader: data iterator.
        - layer_hyperparams: dict containing layer-wise hyperparameters
          such as the initial learning rate, the end momentum, and the l2
          regularization strength.
        """
        self.config = config
        self.layer_hyperparams = layer_hyperparams

        if config.is_train:
            self.train_loader = data_loader[0]
            self.valid_loader = data_loader[1]
            self.num_train = len(self.train_loader.dataset)
            self.num_valid = self.valid_loader.dataset.trials
        else:
            self.test_loader = data_loader
            self.num_test = self.test_loader.dataset.trials

        self.model = SiameseNet()
        if config.use_gpu:
            self.model.cuda()

        # model params
        self.num_params = sum(
            [p.data.nelement() for p in self.model.parameters()])
        self.num_model = get_num_model(config)
        self.num_layers = len(list(self.model.children()))

        print('[*] Number of model parameters: {:,}'.format(self.num_params))

        # path params
        self.ckpt_dir = os.path.join(config.ckpt_dir, self.num_model)
        self.logs_dir = os.path.join(config.logs_dir, self.num_model)

        # misc params
        self.resume = config.resume
        self.use_gpu = config.use_gpu
        self.dtype = (torch.cuda.FloatTensor
                      if self.use_gpu else torch.FloatTensor)

        # optimization params
        self.best = config.best
        self.best_valid_acc = 0.
        self.epochs = config.epochs
        self.start_epoch = 0
        self.lr_patience = config.lr_patience
        self.train_patience = config.train_patience
        self.counter = 0

        # grab layer-wise hyperparams
        self.init_lrs = self.layer_hyperparams['layer_init_lrs']
        self.init_momentums = [config.init_momentum] * self.num_layers
        self.end_momentums = self.layer_hyperparams['layer_end_momentums']
        self.l2_regs = self.layer_hyperparams['layer_l2_regs']

        # compute temper rate for momentum
        if self.epochs == 1:
            f = lambda max, min: min
        else:
            f = lambda max, min: (max - min) / (self.epochs - 1)
        self.momentum_temper_rates = [
            f(x, y) for x, y in zip(self.end_momentums, self.init_momentums)
        ]

        # set global learning rates and momentums
        self.lrs = self.init_lrs
        self.momentums = self.init_momentums

        # # initialize optimizer
        # optim_dict = []
        # for i, layer in enumerate(self.model.children()):
        #     group = {}
        #     group['params'] = layer.parameters()
        #     group['lr'] = self.lrs[i]
        #     group['momentum'] = self.momentums[i]
        #     group['weight_decay'] = self.l2_regs[i]
        #     optim_dict.append(group)
        # self.optimizer = optim.SGD(optim_dict)
        # self.optimizer = optim.SGD(
        #     self.model.parameters(), lr=1e-3, momentum=0.9, weight_decay=4e-4,
        # )
        self.optimizer = optim.Adam(
            self.model.parameters(),
            lr=3e-4,
            weight_decay=6e-5,
        )

        # # learning rate scheduler
        # self.scheduler = StepLR(
        #     self.optimizer, step_size=self.lr_patience, gamma=0.99,
        # )

    def train(self):
        if self.resume:
            self.load_checkpoint(best=False)

        # switch to train mode
        self.model.train()

        # create train and validation log files
        optim_file = open(os.path.join(self.logs_dir, 'optim.csv'), 'w')
        train_file = open(os.path.join(self.logs_dir, 'train.csv'), 'w')
        valid_file = open(os.path.join(self.logs_dir, 'valid.csv'), 'w')

        print("\n[*] Train on {} sample pairs, validate on {} trials".format(
            self.num_train, self.num_valid))

        for epoch in range(self.start_epoch, self.epochs):
            # self.decay_lr()
            # self.temper_momentum(epoch)
            #
            # # log lrs and momentums
            # n = self.num_layers
            # msg = (
            #     "{}, " + ", ".join(["{}"] * n) + ", " + ", ".join(["{}"] * n)
            # )
            # optim_file.write(msg.format(
            #     epoch, *self.momentums, *self.lrs)
            # )

            print('\nEpoch: {}/{}'.format(epoch + 1, self.epochs))

            train_loss = self.train_one_epoch(epoch, train_file)
            valid_acc = self.validate(epoch, valid_file)

            # check for improvement
            is_best = valid_acc > self.best_valid_acc
            msg = "train loss: {:.3f} - val acc: {:.3f}"
            if is_best:
                msg += " [*]"
                self.counter = 0
            print(msg.format(train_loss, valid_acc))

            # checkpoint the model
            if not is_best:
                self.counter += 1
            if self.counter > self.train_patience:
                print("[!] No improvement in a while, stopping training.")
                return
            self.best_valid_acc = max(valid_acc, self.best_valid_acc)
            self.save_checkpoint(
                {
                    'epoch': epoch + 1,
                    'model_state': self.model.state_dict(),
                    'optim_state': self.optimizer.state_dict(),
                    'best_valid_acc': self.best_valid_acc,
                }, is_best)
        # release resources
        optim_file.close()
        train_file.close()
        valid_file.close()

    def train_one_epoch(self, epoch, file):
        train_batch_time = AverageMeter()
        train_losses = AverageMeter()

        tic = time.time()
        with tqdm(total=self.num_train) as pbar:
            for i, (x1, x2, y) in enumerate(self.train_loader):
                if self.use_gpu:
                    x1, x2, y = x1.cuda(), x2.cuda(), y.cuda()
                x1, x2, y = Variable(x1), Variable(x2), Variable(y)

                # split input pairs along the batch dimension
                batch_size = x1.shape[0]

                out = self.model(x1, x2)
                loss = F.binary_cross_entropy_with_logits(out, y)

                # compute gradients and update
                self.optimizer.zero_grad()
                loss.backward()
                self.optimizer.step()

                # store batch statistics
                toc = time.time()
                train_losses.update(loss.data[0], batch_size)
                train_batch_time.update(toc - tic)
                tic = time.time()

                pbar.set_description(("{:.1f}s - loss: {:.3f}".format(
                    train_batch_time.val,
                    train_losses.val,
                )))
                pbar.update(batch_size)

                # log loss
                iter = (epoch * len(self.train_loader)) + i
                file.write('{},{}\n'.format(iter, train_losses.val))

            return train_losses.avg

    def validate(self, epoch, file):
        # switch to evaluate mode
        self.model.eval()

        correct = 0
        for i, (x1, x2) in enumerate(self.valid_loader):
            if self.use_gpu:
                x1, x2 = x1.cuda(), x2.cuda()
            x1, x2 = Variable(x1, volatile=True), Variable(x2, volatile=True)

            batch_size = x1.shape[0]

            # compute log probabilities
            out = self.model(x1, x2)
            log_probas = F.sigmoid(out)

            # get index of max log prob
            pred = log_probas.data.max(0)[1][0]
            if pred == 0:
                correct += 1

        # compute acc and log
        valid_acc = (100. * correct) / self.num_valid
        iter = epoch
        file.write('{},{}\n'.format(iter, valid_acc))
        return valid_acc

    def test(self):
        # load best model
        self.load_checkpoint(best=self.best)

        # switch to evaluate mode
        self.model.eval()

        correct = 0
        for i, (x1, x2) in enumerate(self.test_loader):
            if self.use_gpu:
                x1, x2 = x1.cuda(), x2.cuda()
            x1, x2 = Variable(x1, volatile=True), Variable(x2, volatile=True)

            batch_size = x1.shape[0]

            # compute log probabilities
            out = self.model(x1, x2)
            log_probas = F.sigmoid(out)

            # get index of max log prob
            pred = log_probas.data.max(0)[1][0]
            if pred == 0:
                correct += 1

        test_acc = (100. * correct) / self.num_test
        print("[*] Test Acc: {}/{} ({:.2f}%)".format(correct, self.num_test,
                                                     test_acc))

    def temper_momentum(self, epoch):
        """
        This function linearly increases the per-layer momentum to
        a predefined ceiling over a set amount of epochs.
        """
        if epoch == 0:
            return
        self.momentums = [
            x + y for x, y in zip(self.momentums, self.momentum_temper_rates)
        ]
        for i, param_group in enumerate(self.optimizer.param_groups):
            param_group['momentum'] = self.momentums[i]

    def decay_lr(self):
        """
        This function linearly decays the per-layer lr over a set
        amount of epochs.
        """
        self.scheduler.step()
        for i, param_group in enumerate(self.optimizer.param_groups):
            self.lrs[i] = param_group['lr']

    def save_checkpoint(self, state, is_best):
        filename = 'model_ckpt.tar'
        ckpt_path = os.path.join(self.ckpt_dir, filename)
        torch.save(state, ckpt_path)

        if is_best:
            filename = 'best_model_ckpt.tar'
            shutil.copyfile(ckpt_path, os.path.join(self.ckpt_dir, filename))

    def load_checkpoint(self, best=False):
        print("[*] Loading model from {}".format(self.ckpt_dir))

        filename = 'model_ckpt.tar'
        if best:
            filename = 'best_model_ckpt.tar'
        ckpt_path = os.path.join(self.ckpt_dir, filename)
        ckpt = torch.load(ckpt_path)

        # load variables from checkpoint
        self.start_epoch = ckpt['epoch']
        self.best_valid_acc = ckpt['best_valid_acc']
        self.model.load_state_dict(ckpt['model_state'])
        self.optimizer.load_state_dict(ckpt['optim_state'])

        if best:
            print("[*] Loaded {} checkpoint @ epoch {} "
                  "with best valid acc of {:.3f}".format(
                      filename, ckpt['epoch'], ckpt['best_valid_acc']))
        else:
            print("[*] Loaded {} checkpoint @ epoch {}".format(
                filename, ckpt['epoch']))
        running_loss += loss.item()
        prob = torch.sigmoid(outputs_l)
        out = torch.where(prob >= 0.5,
                          torch.cuda.FloatTensor(prob.shape).fill_(1),
                          torch.cuda.FloatTensor(
                              prob.shape).fill_(0)).squeeze()
        total += labels_l.size(0)
        correct += (out == labels_l).sum().item()
    print('Train: [%d, %5d] loss: %.3f acc: %.3f' %
          (epoch + 1, args.epochs, running_loss /
           (i + 1), 100.0 * correct / total))
    running_loss = 0.0

    correct = 0
    total = 0
    net.eval()
    with torch.no_grad():
        for data in valloader:
            inputs, labels = data
            labels = labels.float()

            (inputs1, inputs2) = inputs
            inputs1 = inputs1.to(device)
            inputs2 = inputs2.to(device)
            labels = labels.to(device)
            outputs = net(inputs1, inputs2)
            prob = torch.sigmoid(outputs)
            out = torch.where(prob >= 0.5,
                              torch.cuda.FloatTensor(prob.shape).fill_(1),
                              torch.cuda.FloatTensor(
                                  prob.shape).fill_(0)).squeeze()
Exemplo n.º 5
0
    return camera_id, labels


gallery_path = image_datasets['gallery'].imgs
query_path = image_datasets['query'].imgs

gallery_cam, gallery_label = get_id(gallery_path)
query_cam, query_label = get_id(query_path)


######################################################################
# Load Collected data Trained model
print('-------test-----------')
embedding_net = ft_net_dense(751)
model_siamese = SiameseNet(embedding_net)
model_siamese = load_network_easy(model_siamese, name)
model_siamese = model_siamese.eval()
if use_gpu:
    model = model_siamese.cuda()

# Extract feature
with torch.no_grad():
    gallery_feature = extract_feature(model, dataloaders['gallery'])
    query_feature = extract_feature(model, dataloaders['query'])


result = {'gallery_f': gallery_feature.numpy(), 'gallery_label': gallery_label, 'gallery_cam': gallery_cam,
          'query_f': query_feature.numpy(), 'query_label': query_label, 'query_cam': query_cam}
scipy.io.savemat('pytorch_result.mat', result)

Exemplo n.º 6
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    def train(self):
        # Dataloader
        train_loader, valid_loader = get_train_validation_loader(
            self.config.data_dir, self.config.batch_size,
            self.config.num_train, self.config.augment, self.config.way,
            self.config.valid_trials, self.config.shuffle, self.config.seed,
            self.config.num_workers, self.config.pin_memory)

        # Model, Optimizer, criterion
        model = SiameseNet()
        if self.config.optimizer == "SGD":
            optimizer = optim.SGD(model.parameters(), lr=self.config.lr)
        else:
            optimizer = optim.Adam(model.parameters())
        criterion = torch.nn.BCEWithLogitsLoss()

        if self.config.use_gpu:
            model.cuda()

        # Load check point
        if self.config.resume:
            start_epoch, best_epoch, best_valid_acc, model_state, optim_state = self.load_checkpoint(
                best=False)
            model.load_state_dict(model_state)
            optimizer.load_state_dict(optim_state)
            one_cycle = OneCyclePolicy(optimizer,
                                       self.config.lr,
                                       (self.config.epochs - start_epoch) *
                                       len(train_loader),
                                       momentum_rng=[0.85, 0.95])
        else:
            best_epoch = 0
            start_epoch = 0
            best_valid_acc = 0
            one_cycle = OneCyclePolicy(optimizer,
                                       self.config.lr,
                                       self.config.epochs * len(train_loader),
                                       momentum_rng=[0.85, 0.95])

        # create tensorboard summary and add model structure.
        writer = SummaryWriter(os.path.join(self.config.logs_dir, 'logs'),
                               filename_suffix=self.config.num_model)
        im1, im2, _ = next(iter(valid_loader))
        writer.add_graph(model, [im1.to(self.device), im2.to(self.device)])

        counter = 0
        num_train = len(train_loader)
        num_valid = len(valid_loader)
        print(
            f"[*] Train on {len(train_loader.dataset)} sample pairs, validate on {valid_loader.dataset.trials} trials"
        )

        # Train & Validation
        main_pbar = tqdm(range(start_epoch, self.config.epochs),
                         initial=start_epoch,
                         position=0,
                         total=self.config.epochs,
                         desc="Process")
        for epoch in main_pbar:
            train_losses = AverageMeter()
            valid_losses = AverageMeter()

            # TRAIN
            model.train()
            train_pbar = tqdm(enumerate(train_loader),
                              total=num_train,
                              desc="Train",
                              position=1,
                              leave=False)
            for i, (x1, x2, y) in train_pbar:
                if self.config.use_gpu:
                    x1, x2, y = x1.to(self.device), x2.to(self.device), y.to(
                        self.device)
                out = model(x1, x2)
                loss = criterion(out, y.unsqueeze(1))

                # compute gradients and update
                optimizer.zero_grad()
                loss.backward()
                optimizer.step()
                one_cycle.step()

                # store batch statistics
                train_losses.update(loss.item(), x1.shape[0])

                # log loss
                writer.add_scalar("Loss/Train", train_losses.val,
                                  epoch * len(train_loader) + i)
                train_pbar.set_postfix_str(f"loss: {train_losses.val:0.3f}")

            # VALIDATION
            model.eval()
            valid_acc = 0
            correct_sum = 0
            valid_pbar = tqdm(enumerate(valid_loader),
                              total=num_valid,
                              desc="Valid",
                              position=1,
                              leave=False)
            with torch.no_grad():
                for i, (x1, x2, y) in valid_pbar:

                    if self.config.use_gpu:
                        x1, x2, y = x1.to(self.device), x2.to(
                            self.device), y.to(self.device)

                    # compute log probabilities
                    out = model(x1, x2)
                    loss = criterion(out, y.unsqueeze(1))

                    y_pred = torch.sigmoid(out)
                    y_pred = torch.argmax(y_pred)
                    if y_pred == 0:
                        correct_sum += 1

                    # store batch statistics
                    valid_losses.update(loss.item(), x1.shape[0])

                    # compute acc and log
                    valid_acc = correct_sum / num_valid
                    writer.add_scalar("Loss/Valid", valid_losses.val,
                                      epoch * len(valid_loader) + i)
                    valid_pbar.set_postfix_str(f"accuracy: {valid_acc:0.3f}")
            writer.add_scalar("Acc/Valid", valid_acc, epoch)

            # check for improvement
            if valid_acc > best_valid_acc:
                is_best = True
                best_valid_acc = valid_acc
                best_epoch = epoch
                counter = 0
            else:
                is_best = False
                counter += 1

            # checkpoint the model
            if counter > self.config.train_patience:
                print("[!] No improvement in a while, stopping training.")
                return

            if is_best or epoch % 5 == 0 or epoch == self.config.epochs:
                self.save_checkpoint(
                    {
                        'epoch': epoch,
                        'model_state': model.state_dict(),
                        'optim_state': optimizer.state_dict(),
                        'best_valid_acc': best_valid_acc,
                        'best_epoch': best_epoch,
                    }, is_best)

            main_pbar.set_postfix_str(
                f"best acc: {best_valid_acc:.3f} best epoch: {best_epoch} ")

            tqdm.write(
                f"[{epoch}] train loss: {train_losses.avg:.3f} - valid loss: {valid_losses.avg:.3f} - valid acc: {valid_acc:.3f} {'[BEST]' if is_best else ''}"
            )

        # release resources
        writer.close()