Пример #1
0
def visualize_box(sample, boxes=None, idx=None, display=False):
    if idx is None:
        idx = 0
    if boxes is None:
        heatmaps = [hm[idx, :, :, 0] for hm in sample['heatmaps']]
        offsets = [of[idx, :, :, :] for of in sample['offsets']]
        boxes = heatmap2box(heatmaps, offsets)
    else:
        boxes = boxes[idx]
    # Visualize reconstructed bounding boxes on image in original scale
    orig_image = sample['orig_image'][idx, :, :, :]
    box_on_image = concat_box_on_image(orig_image, boxes, color=(0, 255, 0))
    if display:
        visualize_image(box_on_image)
    # Visualize reconstructed bounding boxes on depth in original scale
    orig_depth = sample['orig_depth'][idx, :, :, 0]
    orig_depth = flowlib.visualize_disp(orig_depth)
    box_on_depth = concat_box_on_image(orig_depth,
                                       boxes,
                                       color=(255, 255, 255))
    if display:
        visualize_image(box_on_depth)
    # Visualize reconstructed bounding boxes on flow in original scale
    orig_flow = sample['orig_flow'][idx, :, :, :]
    orig_flow = flowlib.visualize_flow(orig_flow)
    box_on_flow = concat_box_on_image(orig_flow.astype(np.uint8),
                                      boxes,
                                      color=(0, 0, 0))
    if display:
        visualize_image(box_on_flow)
    return box_on_image, box_on_depth, box_on_flow
Пример #2
0
    def visualize_prediction(self,
                             images,
                             depths,
                             flows,
                             prediction,
                             prediction_offset,
                             loss,
                             figure_prefix=''):
        # construct a full image containing all scale images and
        # a full attention map containing all scale attention maps
        max_im_size = np.max(np.array(self.data.im_widths))
        sum_im_size = np.sum(np.array(self.data.im_heights))
        im_all = np.zeros((sum_im_size, max_im_size, 3))
        dp_all = np.zeros((sum_im_size, max_im_size, 3))
        fl_all = np.zeros((sum_im_size, max_im_size, 3))
        max_ou_size = np.max(np.array(self.data.output_widths))
        sum_ou_size = np.sum(np.array(self.data.output_heights))
        pred_all = np.zeros((sum_ou_size, max_ou_size))
        cnt_im, cnt_pred = 0, 0
        for i in range(len(images)):
            im = images[i][0, :, :, :].transpose(1, 2, 0)
            height, width = im.shape[0], im.shape[1]
            im_all[cnt_im:cnt_im + height, 0:width, :] = im

            dp = depths[i][0, 0, :, :]
            dp = flowlib.visualize_disp(dp)
            dp_all[cnt_im:cnt_im + height, 0:width, :] = dp

            fl = flows[i][0, :, :, :].transpose(1, 2, 0)
            fl = flowlib.visualize_flow(fl)
            fl_all[cnt_im:cnt_im + height, 0:width, :] = fl
            cnt_im = cnt_im + height

            pred = prediction[i][0, 0, :, :]
            height, width = pred.shape[0], pred.shape[1]
            pred_all[cnt_pred:cnt_pred + height, 0:width] = pred
            cnt_pred = cnt_pred + height

        pred_on_image = self.visualize_prediction_on_image(im_all, pred_all)

        if figure_prefix is '':
            fig, ax = plt.subplots(1)
            ax.imshow(im_all)
            fig, ax = plt.subplots(1)
            ax.imshow(dp_all)
            fig, ax = plt.subplots(1)
            ax.imshow(fl_all)
            fig, ax = plt.subplots(1)
            ax.imshow(pred_all)
            fig, ax = plt.subplots(1)
            ax.imshow(pred_on_image)
        else:
            # self.save_image(im_all, figure_prefix + '_image_all.jpg')
            # self.save_image(dp_all, figure_prefix + '_depth_all.jpg')
            # self.save_image(fl_all, figure_prefix + '_flow_all.jpg')
            # self.save_image(pred_all, figure_prefix + '_pred_all.jpg')
            self.save_image(pred_on_image,
                            figure_prefix + '_pred_loss_%.4f.jpg' % loss)
Пример #3
0
    def visualize_prediction(self,
                             images,
                             orig_im,
                             depths,
                             flows,
                             pred_label,
                             acc,
                             figure_prefix=''):
        # construct a full image containing all scale images and
        # a full attention map containing all scale attention maps
        max_im_size = np.max(np.array(self.data.im_widths))
        sum_im_size = np.sum(np.array(self.data.im_heights))
        im_all = np.zeros((sum_im_size, max_im_size, 3))
        dp_all = np.zeros((sum_im_size, max_im_size, 3))
        fl_all = np.zeros((sum_im_size, max_im_size, 3))
        cnt_im = 0
        for i in range(len(images)):
            im = images[i][0, :, :, :].transpose(1, 2, 0)
            height, width = im.shape[0], im.shape[1]
            im_all[cnt_im:cnt_im + height, 0:width, :] = im

            dp = depths[i][0, 0, :, :]
            dp = flowlib.visualize_disp(dp)
            dp_all[cnt_im:cnt_im + height, 0:width, :] = dp

            fl = flows[i][0, :, :, :].transpose(1, 2, 0)
            fl = flowlib.visualize_flow(fl)
            fl_all[cnt_im:cnt_im + height, 0:width, :] = fl
            cnt_im = cnt_im + height

        pred = pred_label[0, :, :]
        pred = vdrift.visualize_seg(pred, self.data.inverse_color_map)
        orig_im = orig_im[0, :, :, :].transpose(1, 2, 0)
        pred_on_image = self.data.visualize_seg_on_image(orig_im, pred)

        if figure_prefix is '':
            fig, ax = plt.subplots(1)
            ax.imshow(im_all)
            fig, ax = plt.subplots(1)
            ax.imshow(dp_all)
            fig, ax = plt.subplots(1)
            ax.imshow(fl_all)
            fig, ax = plt.subplots(1)
            ax.imshow(pred)
            fig, ax = plt.subplots(1)
            ax.imshow(pred_on_image)
        else:
            # self.save_image(im_all, figure_prefix + '_image_all.jpg')
            # self.save_image(dp_all, figure_prefix + '_depth_all.jpg')
            # self.save_image(fl_all, figure_prefix + '_flow_all.jpg')
            # self.save_image(pred, figure_prefix + '_pred.jpg')
            self.save_image(pred_on_image,
                            figure_prefix + '_acc_%.4f.jpg' % acc)
Пример #4
0
def visualize_input(sample, idx=None, display=False):
    if idx is None:
        idx = 0
    # Visualize input images in all scales
    images = [im[idx, :, :, :] for im in sample['images']]
    image_all = concat_images(images)
    if display:
        visualize_image(image_all)
    # Visualize input depths in all scales
    depths = [
        flowlib.visualize_disp(dp[idx, :, :, 0]) for dp in sample['depths']
    ]
    depth_all = concat_images(depths)
    if display:
        visualize_image(depth_all)
    # Visualize input flows in all scales
    flows = [
        flowlib.visualize_flow(fl[idx, :, :, :]) for fl in sample['flows']
    ]
    flow_all = concat_images(flows)
    if display:
        visualize_image(flow_all.astype(np.uint8))
Пример #5
0
    def visualize(self,
                  images,
                  orig_image,
                  depths,
                  orig_depth,
                  flows,
                  orig_flow,
                  boxes,
                  label_maps,
                  offsets,
                  idx=None):
        if idx is None:
            idx = 0
        # Plot original image and depth with bounding box
        orig_im = orig_image[idx, :, :, :].transpose(1, 2, 0)
        orig_dp = orig_depth[idx, 0, :, :]
        orig_fl = orig_flow[idx, :, :, :].transpose(1, 2, 0)
        if len(boxes[idx]) > 0:
            b = boxes[idx].copy()
            im_height, im_width = orig_im.shape[0], orig_im.shape[1]
            b[:, 0], b[:, 2] = b[:, 0] * im_width, b[:, 2] * im_width
            b[:, 1], b[:, 3] = b[:, 1] * im_height, b[:, 3] * im_height
        else:
            b = []
        fig, ax = plt.subplots(1)
        ax.imshow(orig_im)
        if len(b) > 0:
            for i in range(b.shape[0]):
                rect = patches.Rectangle((b[i][0], b[i][1]),
                                         b[i][2] - 1 - b[i][0],
                                         b[i][3] - 1 - b[i][1],
                                         linewidth=2,
                                         edgecolor='g',
                                         facecolor='none')
                ax.add_patch(rect)
        plt.show()
        fig, ax = plt.subplots(1)
        orig_dp = flowlib.visualize_disp(orig_dp)
        ax.imshow(orig_dp)
        if len(b) > 0:
            for i in range(b.shape[0]):
                rect = patches.Rectangle((b[i][0], b[i][1]),
                                         b[i][2] - 1 - b[i][0],
                                         b[i][3] - 1 - b[i][1],
                                         linewidth=2,
                                         edgecolor='w',
                                         facecolor='none')
                ax.add_patch(rect)
        plt.show()
        fig, ax = plt.subplots(1)
        orig_fl = flowlib.visualize_flow(orig_fl)
        ax.imshow(orig_fl)
        if len(b) > 0:
            for i in range(b.shape[0]):
                rect = patches.Rectangle((b[i][0], b[i][1]),
                                         b[i][2] - 1 - b[i][0],
                                         b[i][3] - 1 - b[i][1],
                                         linewidth=2,
                                         edgecolor='k',
                                         facecolor='none')
                ax.add_patch(rect)
        plt.show()
        # construct a full image containing all scale images
        max_im_size = np.max(np.array(self.im_widths))
        sum_im_size = np.sum(np.array(self.im_heights))
        im_all = np.zeros((sum_im_size, max_im_size, 3))
        dp_all = np.zeros((sum_im_size, max_im_size, 3))
        fl_all = np.zeros((sum_im_size, max_im_size, 3))
        cnt = 0
        for i in range(len(images)):
            im = images[i][idx, :, :, :].transpose(1, 2, 0)
            height, width = im.shape[0], im.shape[1]
            im_all[cnt:cnt + height, 0:width, :] = im
            dp = depths[i][idx, 0, :, :]
            dp = flowlib.visualize_disp(dp)
            dp_all[cnt:cnt + height, 0:width, :] = dp
            fl = flows[i][idx, :, :, :].transpose(1, 2, 0)
            fl = flowlib.visualize_flow(fl)
            fl_all[cnt:cnt + height, 0:width, :] = fl
            cnt = cnt + height
        fig, ax = plt.subplots(1)
        ax.imshow(im_all)
        plt.show()
        fig, ax = plt.subplots(1)
        ax.imshow(dp_all)
        plt.show()
        fig, ax = plt.subplots(1)
        ax.imshow(fl_all.astype(np.uint8))
        plt.show()

        max_ou_size = np.max(np.array(self.output_widths))
        sum_ou_size = np.sum(np.array(self.output_heights))
        lb_all = np.zeros((sum_ou_size, max_ou_size))
        cnt = 0
        for i in range(len(label_maps)):
            lb = label_maps[i][idx, 0, :, :]
            height, width = lb.shape[0], lb.shape[1]
            lb_all[cnt:cnt + height, 0:width] = lb
            cnt = cnt + height
        fig, ax = plt.subplots(1)
        ax.imshow(lb_all)
        plt.show()

        label_on_image = self.visualize_prediction_on_image(im_all, lb_all)
        fig, ax = plt.subplots(1)
        ax.imshow(label_on_image)
        plt.show()

        fig, ax = plt.subplots(1)
        ax.imshow(orig_im)
        for i in range(len(label_maps)):
            of = offsets[i][idx, :, :, :].transpose(1, 2, 0)
            lb = label_maps[i][idx, 0, :, :]
            ou_height, ou_width = lb.shape[0], lb.shape[1]
            b_idx = np.nonzero(lb)
            y_c, x_c = b_idx[0], b_idx[1]
            b = np.zeros((len(b_idx[0]), 4))
            for k in range(b.shape[0]):
                offset = of[y_c[k], x_c[k], :]
                b[k, 0] = x_c[k] * 1.0 / ou_width + offset[0]
                b[k, 1] = y_c[k] * 1.0 / ou_height + offset[1]
                b[k, 2] = x_c[k] * 1.0 / ou_width + offset[2]
                b[k, 3] = y_c[k] * 1.0 / ou_height + offset[3]
            if len(b) > 0:
                b[:, 0], b[:, 2] = b[:, 0] * im_width, b[:, 2] * im_width
                b[:, 1], b[:, 3] = b[:, 1] * im_height, b[:, 3] * im_height
            for k in range(b.shape[0]):
                rect = patches.Rectangle((b[k][0], b[k][1]),
                                         b[k][2] - 1 - b[k][0],
                                         b[k][3] - 1 - b[k][1],
                                         linewidth=2,
                                         edgecolor='g',
                                         facecolor='none')
                ax.add_patch(rect)
        plt.show()
Пример #6
0
    def visualize(self,
                  images,
                  orig_image,
                  depths,
                  orig_depth,
                  flows,
                  orig_flow,
                  label,
                  orig_label,
                  idx=None):
        if idx is None:
            idx = 0
        orig_im = orig_image[idx, :, :, :].transpose(1, 2, 0)
        orig_dp = orig_depth[idx, 0, :, :]
        orig_fl = orig_flow[idx, :, :, :].transpose(1, 2, 0)
        orig_lb = orig_label[idx, :, :]

        fig, ax = plt.subplots(1)
        ax.imshow(orig_im)
        plt.show()
        fig, ax = plt.subplots(1)
        orig_dp = flowlib.visualize_disp(orig_dp)
        ax.imshow(orig_dp)
        plt.show()
        fig, ax = plt.subplots(1)
        orig_fl = flowlib.visualize_flow(orig_fl)
        ax.imshow(orig_fl)
        plt.show()
        fig, ax = plt.subplots(1)
        orig_lb = vdrift.visualize_seg(orig_lb, self.inverse_color_map)
        ax.imshow(orig_lb)
        plt.show()
        # construct a full image containing all scale images
        max_im_size = np.max(np.array(self.im_widths))
        sum_im_size = np.sum(np.array(self.im_heights))
        im_all = np.zeros((sum_im_size, max_im_size, 3))
        dp_all = np.zeros((sum_im_size, max_im_size, 3))
        fl_all = np.zeros((sum_im_size, max_im_size, 3))
        cnt = 0
        for i in range(len(images)):
            im = images[i][idx, :, :, :].transpose(1, 2, 0)
            height, width = im.shape[0], im.shape[1]
            im_all[cnt:cnt + height, 0:width, :] = im
            dp = depths[i][idx, 0, :, :]
            dp = flowlib.visualize_disp(dp)
            dp_all[cnt:cnt + height, 0:width, :] = dp
            fl = flows[i][idx, :, :, :].transpose(1, 2, 0)
            fl = flowlib.visualize_flow(fl)
            fl_all[cnt:cnt + height, 0:width, :] = fl
            cnt = cnt + height
        fig, ax = plt.subplots(1)
        ax.imshow(im_all)
        plt.show()
        fig, ax = plt.subplots(1)
        ax.imshow(dp_all)
        plt.show()
        fig, ax = plt.subplots(1)
        ax.imshow(fl_all.astype(np.uint8))
        plt.show()

        seg = vdrift.visualize_seg(label[idx, :, :], self.inverse_color_map)
        fig, ax = plt.subplots(1)
        ax.imshow(seg.astype(np.uint8))
        plt.show()

        seg_on_image = self.visualize_seg_on_image(im_all, seg)
        fig, ax = plt.subplots(1)
        ax.imshow(seg_on_image)
        plt.show()
Пример #7
0
    def visualize_box(self,
                      orig_image,
                      orig_depth,
                      orig_flow,
                      boxes,
                      loss,
                      figure_prefix=''):
        orig_im = orig_image[0, :, :, :].transpose(1, 2, 0)
        im_height, im_width = orig_im.shape[0], orig_im.shape[1]
        assert (im_height == self.data.orig_im_size[0])
        assert (im_width == self.data.orig_im_size[1])

        # Plot original large image with bounding box
        boxes = boxes[0]
        if len(boxes) > 0:
            b = boxes.copy()
            sc = b[:, 4]
            b[:, 0], b[:, 2] = b[:, 0] * im_width, b[:, 2] * im_width
            b[:, 1], b[:, 3] = b[:, 1] * im_width, b[:, 3] * im_width
            b = b.astype(np.int)
        else:
            b = []

        orig_im = orig_im * 255.0
        orig_im = orig_im.astype(np.uint8).copy()
        if len(b) > 0:
            for i in range(b.shape[0]):
                cv2.rectangle(orig_im, (b[i, 0], b[i, 1]), (b[i, 2], b[i, 3]),
                              (0, 255, 0), 3)
                cv2.putText(orig_im, '%.4f' % sc[i],
                            (b[i, 0] + 2, b[i, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 255, 0), 2,
                            cv2.LINE_AA)

        # Plot original depth with bounding box
        orig_dp = orig_depth[0, 0, :, :]
        orig_dp = flowlib.visualize_disp(orig_dp)
        orig_dp = orig_dp * 255.0
        orig_dp = orig_dp.astype(np.uint8).copy()
        if len(b) > 0:
            for i in range(b.shape[0]):
                cv2.rectangle(orig_dp, (b[i, 0], b[i, 1]), (b[i, 2], b[i, 3]),
                              (255, 255, 255), 3)
                cv2.putText(orig_dp, '%.4f' % sc[i],
                            (b[i, 0] + 2, b[i, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (255, 255, 255), 2,
                            cv2.LINE_AA)

        # Plot original flow with bounding box
        orig_fl = orig_flow[0, :, :, :].transpose(1, 2, 0)
        orig_fl = flowlib.visualize_flow(orig_fl)
        orig_fl = orig_fl.astype(np.uint8).copy()
        if len(b) > 0:
            for i in range(b.shape[0]):
                cv2.rectangle(orig_fl, (b[i, 0], b[i, 1]), (b[i, 2], b[i, 3]),
                              (0, 0, 0), 3)
                cv2.putText(orig_fl, '%.4f' % sc[i],
                            (b[i, 0] + 2, b[i, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 0, 0), 2,
                            cv2.LINE_AA)

        if figure_prefix is '':
            fig, ax = plt.subplots(1)
            ax.imshow(orig_im)
            fig, ax = plt.subplots(1)
            ax.imshow(orig_dp)
            fig, ax = plt.subplots(1)
            ax.imshow(orig_fl)
            fig, ax = plt.subplots(1)
            ax.imshow(label_on_image)
        else:
            self.save_image(
                orig_im,
                figure_prefix + '_pred_orig_image_loss_%.4f.jpg' % loss)
            self.save_image(
                orig_dp,
                figure_prefix + '_pred_orig_depth_loss_%.4f.jpg' % loss)
            self.save_image(
                orig_fl,
                figure_prefix + '_pred_orig_flow_loss_%.4f.jpg' % loss)
Пример #8
0
    def visualize_groundtruth(self,
                              orig_image,
                              images,
                              orig_depth,
                              depths,
                              orig_flow,
                              flows,
                              boxes,
                              label_maps,
                              offsets,
                              figure_prefix=''):
        orig_im = orig_image[0, :, :, :].transpose(1, 2, 0)
        im_height, im_width = orig_im.shape[0], orig_im.shape[1]

        # Plot original large image with bounding box
        if len(boxes[0]) > 0:
            b = boxes[0].copy()
            b[:, 0], b[:, 2] = b[:, 0] * im_width, b[:, 2] * im_width
            b[:, 1], b[:, 3] = b[:, 1] * im_height, b[:, 3] * im_height
            b = b.astype(np.int)
        else:
            b = []

        orig_im = orig_im * 255.0
        orig_im = orig_im.astype(np.uint8).copy()
        if len(b) > 0:
            for i in range(b.shape[0]):
                cv2.rectangle(orig_im, (b[i, 0], b[i, 1]), (b[i, 2], b[i, 3]),
                              (0, 255, 0), 3)
                cv2.putText(orig_im, self.data.inverse_class_map[1],
                            (b[i, 0] + 2, b[i, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 255, 0), 2,
                            cv2.LINE_AA)

        # Plot original depth with bounding box
        orig_dp = orig_depth[0, 0, :, :]
        orig_dp = flowlib.visualize_disp(orig_dp)
        orig_dp = orig_dp * 255.0
        orig_dp = orig_dp.astype(np.uint8).copy()
        if len(b) > 0:
            for i in range(b.shape[0]):
                cv2.rectangle(orig_dp, (b[i, 0], b[i, 1]), (b[i, 2], b[i, 3]),
                              (255, 255, 255), 3)
                cv2.putText(orig_dp, self.data.inverse_class_map[1],
                            (b[i, 0] + 2, b[i, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (255, 255, 255), 2,
                            cv2.LINE_AA)

        # Plot original flow with bounding box
        orig_fl = orig_flow[0, :, :, :].transpose(1, 2, 0)
        orig_fl = flowlib.visualize_flow(orig_fl)
        orig_fl = orig_fl.astype(np.uint8).copy()
        if len(b) > 0:
            for i in range(b.shape[0]):
                cv2.rectangle(orig_fl, (b[i, 0], b[i, 1]), (b[i, 2], b[i, 3]),
                              (0, 0, 0), 3)
                cv2.putText(orig_fl, self.data.inverse_class_map[1],
                            (b[i, 0] + 2, b[i, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 0, 0), 2,
                            cv2.LINE_AA)

        max_im_size = np.max(np.array(self.data.im_widths))
        sum_im_size = np.sum(np.array(self.data.im_heights))
        im_all = np.zeros((sum_im_size, max_im_size, 3))
        dp_all = np.zeros((sum_im_size, max_im_size, 3))
        fl_all = np.zeros((sum_im_size, max_im_size, 3))
        max_ou_size = np.max(np.array(self.data.output_widths))
        sum_ou_size = np.sum(np.array(self.data.output_heights))
        pred_all = np.zeros((sum_ou_size, max_ou_size))
        cnt_im = 0
        for i in range(len(images)):
            im = images[i][0, :, :, :].transpose(1, 2, 0)
            height, width = im.shape[0], im.shape[1]
            im_all[cnt_im:cnt_im + height, 0:width, :] = im
            cnt_im = cnt_im + height

        max_ou_size = np.max(np.array(self.data.output_widths))
        sum_ou_size = np.sum(np.array(self.data.output_heights))
        lb_all = np.zeros((sum_ou_size, max_ou_size))
        cnt_lb = 0
        for i in range(len(label_maps)):
            lb = label_maps[i][0, 0, :, :]
            height, width = lb.shape[0], lb.shape[1]
            lb_all[cnt_lb:cnt_lb + height, 0:width] = lb
            cnt_lb = cnt_lb + height
        label_on_image = self.visualize_prediction_on_image(im_all, lb_all)

        orig_im2 = orig_image[0, :, :, :].transpose(1, 2, 0)
        im_height, im_width = orig_im2.shape[0], orig_im2.shape[1]
        orig_im2 = orig_im2 * 255.0
        orig_im2 = orig_im2.astype(np.uint8).copy()
        for i in range(len(label_maps)):
            of = offsets[i][0, :, :, :].transpose(1, 2, 0)
            lb = label_maps[i][0, 0, :, :]
            ou_height, ou_width = lb.shape[0], lb.shape[1]
            b_idx = np.nonzero(lb)
            y_c, x_c = b_idx[0], b_idx[1]
            b = np.zeros((len(b_idx[0]), 4))
            for k in range(b.shape[0]):
                offset = of[y_c[k], x_c[k], :]
                b[k, 0] = x_c[k] * 1.0 / ou_width + offset[0]
                b[k, 1] = y_c[k] * 1.0 / ou_height + offset[1]
                b[k, 2] = x_c[k] * 1.0 / ou_width + offset[2]
                b[k, 3] = y_c[k] * 1.0 / ou_height + offset[3]
                b[k, 0], b[k, 2] = b[k, 0] * im_width, b[k, 2] * im_width
                b[k, 1], b[k, 3] = b[k, 1] * im_height, b[k, 3] * im_height
            b = b.astype(np.int)
            for k in range(b.shape[0]):
                cv2.rectangle(orig_im2, (b[k, 0], b[k, 1]), (b[k, 2], b[k, 3]),
                              (0, 255, 0), 3)
                cv2.putText(orig_im2, self.data.inverse_class_map[1],
                            (b[k, 0] + 2, b[k, 1] + 28),
                            cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 255, 0), 2,
                            cv2.LINE_AA)

        if figure_prefix is '':
            fig, ax = plt.subplots(1)
            ax.imshow(orig_im)
            fig, ax = plt.subplots(1)
            ax.imshow(orig_dp)
            fig, ax = plt.subplots(1)
            ax.imshow(orig_fl)
            fig, ax = plt.subplots(1)
            ax.imshow(label_on_image)
            fig, ax = plt.subplots(1)
            ax.imshow(orig_im2)
        else:
            self.save_image(orig_im, figure_prefix + '_orig_image.jpg')
            self.save_image(orig_dp, figure_prefix + '_orig_depth.jpg')
            self.save_image(orig_fl, figure_prefix + '_orig_flow.jpg')
            self.save_image(label_on_image, figure_prefix + '_label.jpg')
            self.save_image(orig_im2, figure_prefix + '_image_with_box.jpg')