Beispiel #1
0
    def initial_finetune(self, img, detection_box):
        self.stopwatch.start('initial_finetune')
        t = time.time()

        # generate samples
        pos_num, neg_num = ADNetConf.g()['initial_finetune'][
            'pos_num'], ADNetConf.g()['initial_finetune']['neg_num']
        pos_boxes, neg_boxes = detection_box.get_posneg_samples(self.imgwh,
                                                                pos_num,
                                                                neg_num,
                                                                use_whole=True)
        pos_lb_action = BoundingBox.get_action_labels(pos_boxes, detection_box)

        feats = self._get_features([
            commons.extract_region(img, box) for i, box in enumerate(pos_boxes)
        ])
        for box, feat in zip(pos_boxes, feats):
            box.feat = feat
        feats = self._get_features([
            commons.extract_region(img, box) for i, box in enumerate(neg_boxes)
        ])
        for box, feat in zip(neg_boxes, feats):
            box.feat = feat

        # train_fc_finetune_hem
        self._finetune_fc(img, pos_boxes, neg_boxes, pos_lb_action,
                          ADNetConf.get()['initial_finetune']['learning_rate'],
                          ADNetConf.get()['initial_finetune']['iter'])

        self.histories.append((pos_boxes, neg_boxes, pos_lb_action,
                               np.copy(img), self.iteration))
        _logger.info('ADNetRunner.initial_finetune t=%.3f' % t)
        self.stopwatch.stop('initial_finetune')
Beispiel #2
0
    def initial_finetune(self, img, detection_box):

        # print("Start initial_finetune1")
        # generate samples
        pos_num, neg_num = ADNetConf.g()['initial_finetune'][
            'pos_num'], ADNetConf.g()['initial_finetune']['neg_num']
        # print("Ending initial_finetune1")
        pos_boxes, neg_boxes = detection_box.get_posneg_samples(self.imgwh,
                                                                pos_num,
                                                                neg_num,
                                                                use_whole=True)
        # print("Ending initial_finetune133")
        pos_lb_action = BoundingBox.get_action_labels(pos_boxes, detection_box)
        # print("Ending initial_finetune44")

        feats = self._get_features([
            commons.extract_region(img, box) for i, box in enumerate(pos_boxes)
        ])
        for box, feat in zip(pos_boxes, feats):
            box.feat = feat
        feats = self._get_features([
            commons.extract_region(img, box) for i, box in enumerate(neg_boxes)
        ])
        for box, feat in zip(neg_boxes, feats):
            box.feat = feat

        # print("Ending initial_finetune2")
        # train_fc_finetune_hem
        self._finetune_fc(img, pos_boxes, neg_boxes, pos_lb_action,
                          ADNetConf.get()['initial_finetune']['learning_rate'],
                          ADNetConf.get()['initial_finetune']['iter'])

        self.histories.append((pos_boxes, neg_boxes, pos_lb_action,
                               np.copy(img), self.iteration))
Beispiel #3
0
    def tracking(self, img, curr_bbox):
        self.iteration += 1
        is_tracked = True
        boxes = []
        self.latest_score = -1
        self.stopwatch.start('tracking.do_action')
        for track_i in range(ADNetConf.get()['predict']['num_action']):
            patch = commons.extract_region(img, curr_bbox)

            # forward with image & action history
            actions, classes = self.persistent_sess.run(
                [self.adnet.layer_actions, self.adnet.layer_scores],
                feed_dict={
                    self.adnet.input_tensor: [patch],
                    self.adnet.action_history_tensor:
                    [commons.onehot_flatten(self.action_histories)],
                    self.tensor_is_training:
                    False
                })

            latest_score = classes[0][1]
            if latest_score < ADNetConf.g()['predict']['thresh_fail']:
                is_tracked = False
                self.action_histories_old = np.copy(self.action_histories)
                self.action_histories = np.insert(self.action_histories, 0,
                                                  12)[:-1]
                break
            else:
                self.failed_cnt = 0
            self.latest_score = latest_score

            # move box
            action_idx = np.argmax(actions[0])
            self.action_histories = np.insert(self.action_histories, 0,
                                              action_idx)[:-1]
            prev_bbox = curr_bbox
            curr_bbox = curr_bbox.do_action(self.imgwh, action_idx)
            if action_idx != ADNetwork.ACTION_IDX_STOP:
                if prev_bbox == curr_bbox:
                    print('action idx', action_idx)
                    print(prev_bbox)
                    print(curr_bbox)
                    raise Exception('box not moved.')

            # oscillation check
            if action_idx != ADNetwork.ACTION_IDX_STOP and curr_bbox in boxes:
                action_idx = ADNetwork.ACTION_IDX_STOP

            if action_idx == ADNetwork.ACTION_IDX_STOP:
                break

            boxes.append(curr_bbox)
        self.stopwatch.stop('tracking.do_action')

        # redetection when tracking failed
        new_score = 0.0
        if not is_tracked:
            self.failed_cnt += 1
            # run redetection callback function
            new_box, new_score = self.callback_redetection(curr_bbox, img)
            if new_box is not None:
                curr_bbox = new_box
                patch = commons.extract_region(img, curr_bbox)
            _logger.debug('redetection success=%s' %
                          (str(new_box is not None)))

        # save samples
        if is_tracked or new_score > ADNetConf.g(
        )['predict']['thresh_success']:
            self.stopwatch.start('tracking.save_samples.roi')
            imgwh = Coordinate.get_imgwh(img)
            pos_num, neg_num = ADNetConf.g(
            )['finetune']['pos_num'], ADNetConf.g()['finetune']['neg_num']
            pos_boxes, neg_boxes = curr_bbox.get_posneg_samples(
                imgwh,
                pos_num,
                neg_num,
                use_whole=False,
                pos_thresh=ADNetConf.g()['finetune']['pos_thresh'],
                neg_thresh=ADNetConf.g()['finetune']['neg_thresh'],
                uniform_translation_f=2,
                uniform_scale_f=5)
            self.stopwatch.stop('tracking.save_samples.roi')
            self.stopwatch.start('tracking.save_samples.feat')
            feats = self._get_features([
                commons.extract_region(img, box)
                for i, box in enumerate(pos_boxes)
            ])
            for box, feat in zip(pos_boxes, feats):
                box.feat = feat
            feats = self._get_features([
                commons.extract_region(img, box)
                for i, box in enumerate(neg_boxes)
            ])
            for box, feat in zip(neg_boxes, feats):
                box.feat = feat
            pos_lb_action = BoundingBox.get_action_labels(pos_boxes, curr_bbox)
            self.histories.append((pos_boxes, neg_boxes, pos_lb_action,
                                   np.copy(img), self.iteration))

            # clear old ones
            self.histories = self.histories[-ADNetConf.g(
            )['finetune']['long_term']:]
            self.stopwatch.stop('tracking.save_samples.feat')

        # online finetune
        if self.iteration % ADNetConf.g(
        )['finetune']['interval'] == 0 or is_tracked is False:
            img_pos, img_neg = [], []
            pos_boxes, neg_boxes, pos_lb_action = [], [], []
            pos_term = 'long_term' if is_tracked else 'short_term'
            for i in range(ADNetConf.g()['finetune'][pos_term]):
                if i >= len(self.histories):
                    break
                pos_boxes.extend(self.histories[-(i + 1)][0])
                pos_lb_action.extend(self.histories[-(i + 1)][2])
                img_pos.extend([self.histories[-(i + 1)][3]] *
                               len(self.histories[-(i + 1)][0]))
            for i in range(ADNetConf.g()['finetune']['short_term']):
                if i >= len(self.histories):
                    break
                neg_boxes.extend(self.histories[-(i + 1)][1])
                img_neg.extend([self.histories[-(i + 1)][3]] *
                               len(self.histories[-(i + 1)][1]))
            self.stopwatch.start('tracking.online_finetune')
            self._finetune_fc((img_pos, img_neg), pos_boxes, neg_boxes,
                              pos_lb_action,
                              ADNetConf.get()['finetune']['learning_rate'],
                              ADNetConf.get()['finetune']['iter'])
            _logger.debug('finetuned')
            self.stopwatch.stop('tracking.online_finetune')

        visualizer.image('patch', patch)
        # cv2.imshow('patch', patch)
        return curr_bbox