Пример #1
0
    def __test_img(self, image_path, json_path, raw_path, vis_path):
        Log.info('Image Path: {}'.format(image_path))
        img = ImageHelper.read_image(
            image_path,
            tool=self.configer.get('data', 'image_tool'),
            mode=self.configer.get('data', 'input_mode'))
        ori_img_bgr = ImageHelper.get_cv2_bgr(img,
                                              mode=self.configer.get(
                                                  'data', 'input_mode'))

        inputs = self.blob_helper.make_input(img,
                                             input_size=self.configer.get(
                                                 'data', 'input_size'),
                                             scale=1.0)

        with torch.no_grad():
            inputs = inputs.unsqueeze(0).to(self.device)
            _, _, detections = self.det_net(inputs)

        batch_detections = self.decode(detections, self.configer)
        json_dict = self.__get_info_tree(batch_detections[0], ori_img_bgr)

        image_canvas = self.det_parser.draw_bboxes(
            ori_img_bgr.copy(),
            json_dict,
            conf_threshold=self.configer.get('res', 'vis_conf_thre'))
        ImageHelper.save(ori_img_bgr, raw_path)
        ImageHelper.save(image_canvas, vis_path)

        Log.info('Json Path: {}'.format(json_path))
        JsonHelper.save_file(json_dict, json_path)
        return json_dict
Пример #2
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    def __test_img(self, image_path, json_path, raw_path, vis_path):
        Log.info('Image Path: {}'.format(image_path))
        img = ImageHelper.read_image(
            image_path,
            tool=self.configer.get('data', 'image_tool'),
            mode=self.configer.get('data', 'input_mode'))
        ori_img_bgr = ImageHelper.get_cv2_bgr(img,
                                              mode=self.configer.get(
                                                  'data', 'input_mode'))
        img, scale = BoundResize()(img)
        inputs = self.blob_helper.make_input(img, scale=1.0)
        with torch.no_grad():
            # Forward pass.
            test_group = self.det_net(inputs, scale)

            test_indices_and_rois, test_roi_locs, test_roi_scores, test_rois_num = test_group

        batch_detections = self.decode(test_roi_locs, test_roi_scores,
                                       test_indices_and_rois,
                                       test_rois_num, self.configer,
                                       ImageHelper.get_size(img))
        json_dict = self.__get_info_tree(batch_detections[0],
                                         ori_img_bgr,
                                         scale=scale)

        image_canvas = self.det_parser.draw_bboxes(
            ori_img_bgr.copy(),
            json_dict,
            conf_threshold=self.configer.get('vis', 'conf_threshold'))
        cv2.imwrite(vis_path, image_canvas)
        cv2.imwrite(raw_path, ori_img_bgr)

        Log.info('Json Path: {}'.format(json_path))
        JsonHelper.save_file(json_dict, json_path)
        return json_dict
Пример #3
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    def __test_img(self, image_path, save_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)
        ori_img_bgr = ImageHelper.get_cv2_bgr(ori_image,
                                              mode=self.configer.get(
                                                  'data', 'input_mode'))
        heatmap_avg = np.zeros(
            (ori_height, ori_width, self.configer.get('network',
                                                      'heatmap_out')))
        for i, scale in enumerate(self.configer.get('test', 'scale_search')):
            image = self.blob_helper.make_input(ori_image,
                                                input_size=self.configer.get(
                                                    'test', 'input_size'),
                                                scale=scale)
            with torch.no_grad():
                heatmap_out_list = self.pose_net(image)
                heatmap_out = heatmap_out_list[-1]

                # extract outputs, resize, and remove padding
                heatmap = heatmap_out.squeeze(0).cpu().numpy().transpose(
                    1, 2, 0)
                heatmap = cv2.resize(heatmap, (ori_width, ori_height),
                                     interpolation=cv2.INTER_CUBIC)

                heatmap_avg = heatmap_avg + heatmap / len(
                    self.configer.get('test', 'scale_search'))

        all_peaks = self.__extract_heatmap_info(heatmap_avg)
        image_canvas = self.__draw_key_point(all_peaks, ori_img_bgr)
        ImageHelper.save(image_canvas, save_path)
Пример #4
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    def __test_img(self, image_path, json_path, raw_path, vis_path):
        Log.info('Image Path: {}'.format(image_path))
        img = ImageHelper.read_image(image_path,
                                     tool=self.configer.get('data', 'image_tool'),
                                     mode=self.configer.get('data', 'input_mode'))
        ori_img_bgr = ImageHelper.get_cv2_bgr(img, mode=self.configer.get('data', 'input_mode'))

        inputs = self.blob_helper.make_input(img,
                                             input_size=self.configer.get('test', 'input_size'), scale=1.0)

        with torch.no_grad():
            feat_list, bbox, cls = self.det_net(inputs)

        batch_detections = self.decode(bbox, cls,
                                       self.ssd_priorbox_layer(feat_list, self.configer.get('test', 'input_size')),
                                       self.configer, [inputs.size(3), inputs.size(2)])
        json_dict = self.__get_info_tree(batch_detections[0], ori_img_bgr, [inputs.size(3), inputs.size(2)])

        image_canvas = self.det_parser.draw_bboxes(ori_img_bgr.copy(),
                                                   json_dict,
                                                   conf_threshold=self.configer.get('res', 'vis_conf_thre'))
        cv2.imwrite(vis_path, image_canvas)
        cv2.imwrite(raw_path, ori_img_bgr)

        Log.info('Json Path: {}'.format(json_path))
        JsonHelper.save_file(json_dict, json_path)
        return json_dict
Пример #5
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    def __test_img(self, image_path, json_path, raw_path, vis_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)
        ori_img_bgr = ImageHelper.get_cv2_bgr(ori_image, mode=self.configer.get('data', 'input_mode'))
        heatmap_avg = np.zeros((ori_height, ori_width, self.configer.get('network', 'heatmap_out')))
        paf_avg = np.zeros((ori_height, ori_width, self.configer.get('network', 'paf_out')))
        multiplier = [scale * self.configer.get('test', 'input_size')[1] / ori_height
                      for scale in self.configer.get('test', 'scale_search')]
        stride = self.configer.get('network', 'stride')
        for i, scale in enumerate(multiplier):
            image, border_hw = self._get_blob(ori_image, scale=scale)
            with torch.no_grad():
                paf_out_list, heatmap_out_list = self.pose_net(image)
                paf_out = paf_out_list[-1]
                heatmap_out = heatmap_out_list[-1]

                # extract outputs, resize, and remove padding
                heatmap = heatmap_out.squeeze(0).cpu().numpy().transpose(1, 2, 0)

                heatmap = cv2.resize(heatmap, None, fx=stride, fy=stride, interpolation=cv2.INTER_CUBIC)
                heatmap = cv2.resize(heatmap[:border_hw[0], :border_hw[1]],
                                     (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)

                paf = paf_out.squeeze(0).cpu().numpy().transpose(1, 2, 0)
                paf = cv2.resize(paf, None, fx=stride, fy=stride, interpolation=cv2.INTER_CUBIC)
                paf = cv2.resize(paf[:border_hw[0], :border_hw[1]],
                                 (ori_width, ori_height), interpolation=cv2.INTER_CUBIC)

                heatmap_avg = heatmap_avg + heatmap / len(multiplier)
                paf_avg = paf_avg + paf / len(multiplier)

        all_peaks = self.__extract_heatmap_info(heatmap_avg)
        special_k, connection_all = self.__extract_paf_info(ori_img_bgr, paf_avg, all_peaks)
        subset, candidate = self.__get_subsets(connection_all, special_k, all_peaks)
        json_dict = self.__get_info_tree(ori_img_bgr, subset, candidate)

        image_canvas = self.pose_parser.draw_points(ori_img_bgr.copy(), json_dict)
        image_canvas = self.pose_parser.link_points(image_canvas, json_dict)

        ImageHelper.save(image_canvas, vis_path)
        ImageHelper.save(ori_img_bgr, raw_path)
        Log.info('Json Save Path: {}'.format(json_path))
        JsonHelper.save_file(json_dict, json_path)
Пример #6
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    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)
Пример #7
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    def __test_img(self, image_path, json_path, raw_path, vis_path):
        Log.info('Image Path: {}'.format(image_path))
        img = ImageHelper.read_image(
            image_path,
            tool=self.configer.get('data', 'image_tool'),
            mode=self.configer.get('data', 'input_mode'))

        trans = None
        if self.configer.get('dataset') == 'imagenet':
            if self.configer.get('data', 'image_tool') == 'cv2':
                img = Image.fromarray(img)

            trans = transforms.Compose([
                transforms.Scale(256),
                transforms.CenterCrop(224),
            ])

        assert trans is not None
        img = trans(img)

        ori_img_bgr = ImageHelper.get_cv2_bgr(img,
                                              mode=self.configer.get(
                                                  'data', 'input_mode'))

        inputs = self.blob_helper.make_input(img,
                                             input_size=self.configer.get(
                                                 'test', 'input_size'),
                                             scale=1.0)

        with torch.no_grad():
            outputs = self.cls_net(inputs)

        json_dict = self.__get_info_tree(outputs, image_path)

        image_canvas = self.cls_parser.draw_label(ori_img_bgr.copy(),
                                                  json_dict['label'])
        cv2.imwrite(vis_path, image_canvas)
        cv2.imwrite(raw_path, ori_img_bgr)

        Log.info('Json Path: {}'.format(json_path))
        JsonHelper.save_file(json_dict, json_path)
        return json_dict
Пример #8
0
    def __test_img(self, image_path, json_path, raw_path, vis_path):
        Log.info('Image Path: {}'.format(image_path))
        image = ImageHelper.read_image(
            image_path,
            tool=self.configer.get('data', 'image_tool'),
            mode=self.configer.get('data', 'input_mode'))
        ori_img_bgr = ImageHelper.get_cv2_bgr(image,
                                              mode=self.configer.get(
                                                  'data', 'input_mode'))
        width, height = ImageHelper.get_size(image)
        scale1 = self.configer.get('test', 'resize_bound')[0] / min(
            width, height)
        scale2 = self.configer.get('test', 'resize_bound')[1] / max(
            width, height)
        scale = min(scale1, scale2)
        inputs = self.blob_helper.make_input(image, scale=scale)
        b, c, h, w = inputs.size()
        border_wh = [w, h]
        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(inputs.device)
            expand_image[:, :, 0:h, 0:w] = inputs
            inputs = expand_image

        data_dict = dict(
            img=inputs,
            meta=DataContainer([[
                dict(ori_img_size=ImageHelper.get_size(ori_img_bgr),
                     aug_img_size=border_wh,
                     img_scale=scale,
                     input_size=[inputs.size(3),
                                 inputs.size(2)])
            ]],
                               cpu_only=True))

        with torch.no_grad():
            # Forward pass.
            test_group = self.det_net(data_dict)

            test_indices_and_rois, test_roi_locs, test_roi_scores, test_rois_num = test_group

        batch_detections = self.decode(test_roi_locs, test_roi_scores,
                                       test_indices_and_rois, test_rois_num,
                                       self.configer,
                                       DCHelper.tolist(data_dict['meta']))
        json_dict = self.__get_info_tree(batch_detections[0],
                                         ori_img_bgr,
                                         scale=scale)

        image_canvas = self.det_parser.draw_bboxes(
            ori_img_bgr.copy(),
            json_dict,
            conf_threshold=self.configer.get('res', 'vis_conf_thre'))
        cv2.imwrite(vis_path, image_canvas)
        cv2.imwrite(raw_path, ori_img_bgr)

        Log.info('Json Path: {}'.format(json_path))
        JsonHelper.save_file(json_dict, json_path)
        return json_dict