Пример #1
0
    def __init__(self, configer):
        self.configer = configer

        self.seg_visualizer = SegVisualizer(configer)
        self.seg_parser = SegParser(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = SegDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.device = torch.device(
            'cpu' if self.configer.get('gpu') is None else 'cuda')
        self.seg_net = None
Пример #2
0
    def __init__(self, configer):
        self.configer = configer
        self.blob_helper = BlobHelper(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_parser = SegParser(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = DataLoader(configer)
        self.device = torch.device('cpu' if self.configer.get('gpu') is None else 'cuda')
        self.seg_net = None

        self._init_model()
Пример #3
0
class FCNSegmentorTest(object):
    def __init__(self, configer):
        self.configer = configer

        self.seg_visualizer = SegVisualizer(configer)
        self.seg_parser = SegParser(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = SegDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.device = torch.device(
            'cpu' if self.configer.get('gpu') is None else 'cuda')
        self.seg_net = 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.seg_net.eval()

    def __test_img(self, image_path, save_path):
        image = ImageHelper.pil_open_rgb(image_path)
        ori_width, ori_height = image.size
        image = Scale(size=self.configer.get('data', 'input_size'))(image)
        image = ToTensor()(image)
        image = Normalize(mean=self.configer.get('trans_params', 'mean'),
                          std=self.configer.get('trans_params', 'std'))(image)
        with torch.no_grad():
            inputs = image.unsqueeze(0).to(self.device)
            results = self.seg_net.forward(inputs)

            label_map = results.data.cpu().numpy().argmax(axis=1)[0].squeeze()

            label_img = np.array(label_map, dtype=np.uint8)
            if not self.configer.is_empty('details', 'label_list'):
                label_img = self.__relabel(label_img)

            label_img = Image.fromarray(label_img, 'P')
            label_img = label_img.resize((ori_width, ori_height),
                                         Image.NEAREST)
            label_img.save(save_path)

    def __relabel(self, label_map):
        height, width = label_map.shape
        label_dst = np.zeros((height, width), dtype=np.uint8)
        for i in range(self.configer.get('data', 'num_classes')):
            label_dst[label_map == i] = self.configer.get(
                'details', 'label_list')[i]

        label_dst = np.array(label_dst, dtype=np.uint8)

        return label_dst

    def test(self):
        base_dir = os.path.join(self.configer.get('output_dir'),
                                'val/results/seg',
                                self.configer.get('dataset'))

        test_img = self.configer.get('test_img')
        test_dir = self.configer.get('test_dir')
        if test_img is None and test_dir is None:
            Log.error('test_img & test_dir not exists.')
            exit(1)

        if test_img is not None and test_dir is not None:
            Log.error('Either test_img or test_dir.')
            exit(1)

        if test_img is not None:
            base_dir = os.path.join(base_dir, 'test_img')
            if not os.path.exists(base_dir):
                os.makedirs(base_dir)

            filename = test_img.rstrip().split('/')[-1]
            save_path = os.path.join(base_dir, filename)
            self.__test_img(test_img, save_path)

        else:
            base_dir = os.path.join(base_dir, 'test_dir',
                                    test_dir.rstrip('/').split('/')[-1])
            if not os.path.exists(base_dir):
                os.makedirs(base_dir)

            for filename in FileHelper.list_dir(test_dir):
                image_path = os.path.join(test_dir, filename)
                save_path = os.path.join(base_dir, filename)
                if not os.path.exists(os.path.dirname(save_path)):
                    os.makedirs(os.path.dirname(save_path))

                self.__test_img(image_path, save_path)

    def debug(self):
        base_dir = os.path.join(self.configer.get('project_dir'),
                                'vis/results/seg',
                                self.configer.get('dataset'), 'debug')

        if not os.path.exists(base_dir):
            os.makedirs(base_dir)

        val_data_loader = self.seg_data_loader.get_valloader()

        count = 0
        for i, (inputs, targets) in enumerate(val_data_loader):
            for j in range(inputs.size(0)):
                count = count + 1
                if count > 20:
                    exit(1)

                ori_img = DeNormalize(
                    mean=self.configer.get('trans_params', 'mean'),
                    std=self.configer.get('trans_params', 'std'))(inputs[j])
                ori_img = ori_img.numpy().transpose(1, 2, 0).astype(np.uint8)

                image_bgr = cv2.cvtColor(ori_img, cv2.COLOR_RGB2BGR)
                label_map = targets[j].numpy()
                image_canvas = self.seg_parser.colorize(label_map,
                                                        image_canvas=image_bgr)
                cv2.imwrite(
                    os.path.join(base_dir, '{}_{}_vis.png'.format(i, j)),
                    image_canvas)
                cv2.imshow('main', image_canvas)
                cv2.waitKey()
Пример #4
0
class FCNSegmentorTest(object):
    def __init__(self, configer):
        self.configer = configer
        self.blob_helper = BlobHelper(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_parser = SegParser(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = DataLoader(configer)
        self.device = torch.device('cpu' if self.configer.get('gpu') is None else 'cuda')
        self.seg_net = None

        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.seg_net.eval()

    def _get_blob(self, ori_image, scale=None):
        assert scale is not None
        image = None
        if self.configer.exists('test', 'input_size'):
            image = self.blob_helper.make_input(image=ori_image,
                                                input_size=self.configer.get('test', 'input_size'),
                                                scale=scale)

        elif self.configer.exists('test', 'min_side_length') and not self.configer.exists('test', 'max_side_length'):
            image = self.blob_helper.make_input(image=ori_image,
                                                min_side_length=self.configer.get('test', 'min_side_length'),
                                                scale=scale)

        elif not self.configer.exists('test', 'min_side_length') and self.configer.exists('test', 'max_side_length'):
            image = self.blob_helper.make_input(image=ori_image,
                                                max_side_length=self.configer.get('test', 'max_side_length'),
                                                scale=scale)

        elif self.configer.exists('test', 'min_side_length') and self.configer.exists('test', 'max_side_length'):
            image = self.blob_helper.make_input(image=ori_image,
                                                min_side_length=self.configer.get('test', 'min_side_length'),
                                                max_side_length=self.configer.get('test', 'max_side_length'),
                                                scale=scale)

        else:
            Log.error('Test setting error')
            exit(1)

        b, c, h, w = image.size()
        border_hw = [h, w]
        if self.configer.exists('test', 'fit_stride'):
            stride = self.configer.get('test', 'fit_stride')

            pad_w = 0 if (w % stride == 0) else stride - (w % stride)  # right
            pad_h = 0 if (h % stride == 0) else stride - (h % stride)  # down

            expand_image = torch.zeros((b, c, h + pad_h, w + pad_w)).to(image.device)
            expand_image[:, :, 0:h, 0:w] = image
            image = expand_image

        return image, border_hw

    def test_img(self, image_path, label_path, vis_path, raw_path):
        Log.info('Image Path: {}'.format(image_path))
        ori_image = ImageHelper.read_image(image_path,
                                           tool=self.configer.get('data', 'image_tool'),
                                           mode=self.configer.get('data', 'input_mode'))
        total_logits = None
        if self.configer.get('test', 'mode') == 'ss_test':
            total_logits = self.ss_test(ori_image)

        elif self.configer.get('test', 'mode') == 'sscrop_test':
            total_logits = self.sscrop_test(ori_image)

        elif self.configer.get('test', 'mode') == 'ms_test':
            total_logits = self.ms_test(ori_image)

        elif self.configer.get('test', 'mode') == 'mscrop_test':
            total_logits = self.mscrop_test(ori_image)

        else:
            Log.error('Invalid test mode:{}'.format(self.configer.get('test', 'mode')))
            exit(1)

        label_map = np.argmax(total_logits, axis=-1)
        label_img = np.array(label_map, dtype=np.uint8)
        ori_img_bgr = ImageHelper.get_cv2_bgr(ori_image, mode=self.configer.get('data', 'input_mode'))
        image_canvas = self.seg_parser.colorize(label_img, image_canvas=ori_img_bgr)
        ImageHelper.save(image_canvas, save_path=vis_path)
        ImageHelper.save(ori_image, save_path=raw_path)

        if self.configer.exists('data', 'label_list'):
            label_img = self.__relabel(label_img)

        if self.configer.exists('data', 'reduce_zero_label') and self.configer.get('data', 'reduce_zero_label'):
            label_img = label_img + 1
            label_img = label_img.astype(np.uint8)

        label_img = Image.fromarray(label_img, 'P')
        Log.info('Label Path: {}'.format(label_path))
        ImageHelper.save(label_img, label_path)

    def ss_test(self, ori_image):
        ori_width, ori_height = ImageHelper.get_size(ori_image)
        total_logits = np.zeros((ori_height, ori_width, self.configer.get('data', 'num_classes')), np.float32)
        image, border_hw = self._get_blob(ori_image, scale=1.0)
        results = self._predict(image)
        results = cv2.resize(results[:border_hw[0], :border_hw[1]],
                             (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)
        total_logits += results
        return total_logits

    def sscrop_test(self, ori_image):
        ori_width, ori_height = ImageHelper.get_size(ori_image)
        total_logits = np.zeros((ori_height, ori_width, self.configer.get('data', 'num_classes')), np.float32)
        image, _ = self._get_blob(ori_image, scale=1.0)
        crop_size = self.configer.get('test', 'crop_size')
        if image.size()[3] > crop_size[0] and image.size()[2] > crop_size[1]:
            results = self._crop_predict(image, crop_size)
        else:
            results = self._predict(image)

        results = cv2.resize(results, (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)
        total_logits += results
        return total_logits

    def mscrop_test(self, ori_image):
        ori_width, ori_height = ImageHelper.get_size(ori_image)
        total_logits = np.zeros((ori_height, ori_width, self.configer.get('data', 'num_classes')), np.float32)
        for scale in self.configer.get('test', 'scale_search'):
            image, _ = self._get_blob(ori_image, scale=scale)
            crop_size = self.configer.get('test', 'crop_size')
            if image.size()[3] > crop_size[0] and image.size()[2] > crop_size[1]:
                results = self._crop_predict(image, crop_size)
            else:
                results = self._predict(image)

            results = cv2.resize(results, (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)
            total_logits += results

        return total_logits

    def ms_test(self, ori_image):
        ori_width, ori_height = ImageHelper.get_size(ori_image)
        total_logits = np.zeros((ori_height, ori_width, self.configer.get('data', 'num_classes')), np.float32)
        for scale in self.configer.get('test', 'scale_search'):
            image, border_hw = self._get_blob(ori_image, scale=scale)
            results = self._predict(image)
            results = cv2.resize(results[:border_hw[0], :border_hw[1]],
                                 (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)
            total_logits += results

        if self.configer.get('data', 'image_tool') == 'cv2':
            mirror_image = cv2.flip(ori_image, 1)
        else:
            mirror_image = ori_image.transpose(Image.FLIP_LEFT_RIGHT)

        image, border_hw = self._get_blob(mirror_image, scale=1.0)
        results = self._predict(image)
        results = results[:border_hw[0], :border_hw[1]]
        results = cv2.resize(results[:, ::-1], (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)
        total_logits += results
        return total_logits

    def _crop_predict(self, image, crop_size):
        height, width = image.size()[2:]
        np_image = image.squeeze(0).permute(1, 2, 0).cpu().numpy()
        height_starts = self._decide_intersection(height, crop_size[1])
        width_starts = self._decide_intersection(width, crop_size[0])
        split_crops = []
        for height in height_starts:
            for width in width_starts:
                image_crop = np_image[height:height + crop_size[1], width:width + crop_size[0]]
                split_crops.append(image_crop[np.newaxis, :])

        split_crops = np.concatenate(split_crops, axis=0)  # (n, crop_image_size, crop_image_size, 3)
        inputs = torch.from_numpy(split_crops).permute(0, 3, 1, 2).to(self.device)
        with torch.no_grad():
            results = self.seg_net.forward(inputs)
            results = results[-1].permute(0, 2, 3, 1).cpu().numpy()

        reassemble = np.zeros((np_image.shape[0], np_image.shape[1], results.shape[-1]), np.float32)
        index = 0
        for height in height_starts:
            for width in width_starts:
                reassemble[height:height+crop_size[1], width:width+crop_size[0]] += results[index]
                index += 1

        return reassemble

    def _decide_intersection(self, total_length, crop_length):
        stride = int(crop_length * self.configer.get('test', 'crop_stride_ratio'))            # set the stride as the paper do
        times = (total_length - crop_length) // stride + 1
        cropped_starting = []
        for i in range(times):
            cropped_starting.append(stride*i)

        if total_length - cropped_starting[-1] > crop_length:
            cropped_starting.append(total_length - crop_length)  # must cover the total image

        return cropped_starting

    def _predict(self, inputs):
        with torch.no_grad():
            results = self.seg_net.forward(inputs)
            results = results[-1].squeeze(0).permute(1, 2, 0).cpu().numpy()

        return results

    def __relabel(self, label_map):
        height, width = label_map.shape
        label_dst = np.zeros((height, width), dtype=np.uint8)
        for i in range(self.configer.get('data', 'num_classes')):
            label_dst[label_map == i] = self.configer.get('data', 'label_list')[i]

        label_dst = np.array(label_dst, dtype=np.uint8)

        return label_dst

    def debug(self, vis_dir):
        count = 0
        for i, data_dict in enumerate(self.seg_data_loader.get_trainloader()):
            inputs = data_dict['img']
            targets = data_dict['labelmap']
            for j in range(inputs.size(0)):
                count = count + 1
                if count > 20:
                    exit(1)

                image_bgr = self.blob_helper.tensor2bgr(inputs[j])
                label_map = targets[j].numpy()
                image_canvas = self.seg_parser.colorize(label_map, image_canvas=image_bgr)
                cv2.imwrite(os.path.join(vis_dir, '{}_{}_vis.png'.format(i, j)), image_canvas)
                cv2.imshow('main', image_canvas)
                cv2.waitKey()
Пример #5
0
class FCNSegmentorTest(object):
    def __init__(self, configer):
        self.configer = configer
        self.blob_helper = BlobHelper(configer)
        self.seg_visualizer = SegVisualizer(configer)
        self.seg_parser = SegParser(configer)
        self.seg_model_manager = SegModelManager(configer)
        self.seg_data_loader = SegDataLoader(configer)
        self.module_utilizer = ModuleUtilizer(configer)
        self.data_transformer = DataTransformer(configer)
        self.device = torch.device('cpu' if self.configer.get('gpu') is None else 'cuda')
        self.seg_net = 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.seg_net.eval()

    def __test_img(self, image_path, label_path, vis_path, raw_path):
        Log.info('Image Path: {}'.format(image_path))
        ori_image = ImageHelper.read_image(image_path,
                                           tool=self.configer.get('data', 'image_tool'),
                                           mode=self.configer.get('data', 'input_mode'))

        ori_width, ori_height = ImageHelper.get_size(ori_image)

        total_logits = np.zeros((ori_height, ori_width, self.configer.get('data', 'num_classes')), np.float32)
        for scale in self.configer.get('test', 'scale_search'):
            image = self.blob_helper.make_input(image=ori_image,
                                                input_size=self.configer.get('test', 'input_size'),
                                                scale=scale)
            if self.configer.get('test', 'crop_test'):
                crop_size = self.configer.get('test', 'crop_size')
                if image.size()[3] > crop_size[0] and image.size()[2] > crop_size[1]:
                    results = self._crop_predict(image, crop_size)
                else:
                    results = self._predict(image)
            else:
                results = self._predict(image)

            results = cv2.resize(results, (ori_width, ori_height), interpolation=cv2.INTER_LINEAR)
            total_logits += results

        if self.configer.get('test', 'mirror'):
            if self.configer.get('data', 'image_tool') == 'cv2':
                image = cv2.flip(ori_image, 1)
            else:
                image = ori_image.transpose(Image.FLIP_LEFT_RIGHT)

            image = self.blob_helper.make_input(image, input_size=self.configer.get('test', 'input_size'), scale=1.0)
            if self.configer.get('test', 'crop_test'):
                crop_size = self.configer.get('test', 'crop_size')
                if image.size()[3] > crop_size[0] and image.size()[2] > crop_size[1]:
                    results = self._crop_predict(image, crop_size)
                else:
                    results = self._predict(image)
            else:
                results = self._predict(image)

            results = cv2.resize(results[:, ::-1], (ori_width, ori_height), interpolation=cv2.INTER_LINEAR)
            total_logits += results

        label_map = np.argmax(total_logits, axis=-1)
        label_img = np.array(label_map, dtype=np.uint8)
        image_bgr = cv2.cvtColor(np.array(ori_image), cv2.COLOR_RGB2BGR)
        image_canvas = self.seg_parser.colorize(label_img, image_canvas=image_bgr)
        ImageHelper.save(image_canvas, save_path=vis_path)
        ImageHelper.save(ori_image, save_path=raw_path)

        if not self.configer.is_empty('data', 'label_list'):
            label_img = self.__relabel(label_img)

        label_img = Image.fromarray(label_img, 'P')
        Log.info('Label Path: {}'.format(label_path))
        ImageHelper.save(label_img, label_path)

    def _crop_predict(self, image, crop_size):
        height, width = image.size()[2:]
        np_image = image.squeeze(0).permute(1, 2, 0).cpu().numpy()
        height_starts = self._decide_intersection(height, crop_size[1])
        width_starts = self._decide_intersection(width, crop_size[0])
        split_crops = []
        for height in height_starts:
            for width in width_starts:
                image_crop = np_image[height:height + crop_size[1], width:width + crop_size[0]]
                split_crops.append(image_crop[np.newaxis, :])

        split_crops = np.concatenate(split_crops, axis=0)  # (n, crop_image_size, crop_image_size, 3)
        inputs = torch.from_numpy(split_crops).permute(0, 3, 1, 2).to(self.device)
        with torch.no_grad():
            results = self.seg_net.forward(inputs)
            results = results[0].permute(0, 2, 3, 1).cpu().numpy()

        reassemble = np.zeros((np_image.shape[0], np_image.shape[1], results.shape[-1]), np.float32)
        index = 0
        for height in height_starts:
            for width in width_starts:
                reassemble[height:height+crop_size[1], width:width+crop_size[0]] += results[index]
                index += 1

        return reassemble

    def _decide_intersection(self, total_length, crop_length):
        stride = int(crop_length * self.configer.get('test', 'crop_stride_ratio'))            # set the stride as the paper do
        times = (total_length - crop_length) // stride + 1
        cropped_starting = []
        for i in range(times):
            cropped_starting.append(stride*i)

        if total_length - cropped_starting[-1] > crop_length:
            cropped_starting.append(total_length - crop_length)  # must cover the total image

        return cropped_starting

    def _predict(self, inputs):
        with torch.no_grad():
            results = self.seg_net.forward(inputs)
            results = results[0].squeeze().permute(1, 2, 0).cpu().numpy()

        return results

    def __relabel(self, label_map):
        height, width = label_map.shape
        label_dst = np.zeros((height, width), dtype=np.uint8)
        for i in range(self.configer.get('data', 'num_classes')):
            label_dst[label_map == i] = self.configer.get('data', 'label_list')[i]

        label_dst = np.array(label_dst, dtype=np.uint8)

        return label_dst

    def test(self):
        base_dir = os.path.join(self.configer.get('project_dir'),
                                'val/results/seg', self.configer.get('dataset'))

        test_img = self.configer.get('test_img')
        test_dir = self.configer.get('test_dir')
        if test_img is None and test_dir is None:
            Log.error('test_img & test_dir not exists.')
            exit(1)

        if test_img is not None and test_dir is not None:
            Log.error('Either test_img or test_dir.')
            exit(1)

        if test_img is not None:
            base_dir = os.path.join(base_dir, 'test_img')
            filename = test_img.rstrip().split('/')[-1]
            label_path = os.path.join(base_dir, 'label', '{}.png'.format('.'.join(filename.split('.')[:-1])))
            raw_path = os.path.join(base_dir, 'raw', filename)
            vis_path = os.path.join(base_dir, 'vis', '{}_vis.png'.format('.'.join(filename.split('.')[:-1])))
            FileHelper.make_dirs(label_path, is_file=True)
            FileHelper.make_dirs(raw_path, is_file=True)
            FileHelper.make_dirs(vis_path, is_file=True)

            self.__test_img(test_img, label_path, vis_path, raw_path)

        else:
            base_dir = os.path.join(base_dir, 'test_dir', test_dir.rstrip('/').split('/')[-1])
            FileHelper.make_dirs(base_dir)

            for filename in FileHelper.list_dir(test_dir):
                image_path = os.path.join(test_dir, filename)
                label_path = os.path.join(base_dir, 'label', '{}.png'.format('.'.join(filename.split('.')[:-1])))
                raw_path = os.path.join(base_dir, 'raw', filename)
                vis_path = os.path.join(base_dir, 'vis', '{}_vis.png'.format('.'.join(filename.split('.')[:-1])))
                FileHelper.make_dirs(label_path, is_file=True)
                FileHelper.make_dirs(raw_path, is_file=True)
                FileHelper.make_dirs(vis_path, is_file=True)

                self.__test_img(image_path, label_path, vis_path, raw_path)

    def debug(self):
        base_dir = os.path.join(self.configer.get('project_dir'),
                                'vis/results/seg', self.configer.get('dataset'), 'debug')

        if not os.path.exists(base_dir):
            os.makedirs(base_dir)

        count = 0
        for i, data_dict in enumerate(self.seg_data_loader.get_trainloader()):
            inputs = data_dict['img']
            targets = data_dict['labelmap']
            for j in range(inputs.size(0)):
                count = count + 1
                if count > 20:
                    exit(1)

                image_bgr = self.blob_helper.tensor2bgr(inputs[j])
                label_map = targets[j].numpy()
                image_canvas = self.seg_parser.colorize(label_map, image_canvas=image_bgr)
                cv2.imwrite(os.path.join(base_dir, '{}_{}_vis.png'.format(i, j)), image_canvas)
                cv2.imshow('main', image_canvas)
                cv2.waitKey()