Exemple #1
0
  def __init__(self, mask_eval_class, **kwargs):
    """Constructs COCO evaluation class.

    The class provides the interface to metrics_fn in TPUEstimator. The
    _update_op() takes detections from each image and push them to
    self.detections. The _evaluate() loads a JSON file in COCO annotation format
    as the groundtruths and runs COCO evaluation.

    Args:
      mask_eval_class: the set of classes for mask evaluation.
      **kwargs: other keyword arguments passed to the parent class initializer.
    """
    super(ShapeMaskCOCOEvaluator, self).__init__(**kwargs)
    self._mask_eval_class = mask_eval_class
    self._eval_categories = class_utils.coco_split_class_ids(mask_eval_class)
    if mask_eval_class != 'all':
      self._metric_names = [
          x.replace('mask', 'novel_mask') for x in self._metric_names
      ]
    def parse_train_data(self, data):
        """Parse data for ShapeMask training."""
        classes = data['groundtruth_classes']
        boxes = data['groundtruth_boxes']
        masks = data['groundtruth_instance_masks']
        is_crowds = data['groundtruth_is_crowd']
        # Skips annotations with `is_crowd` = True.
        if self._skip_crowd_during_training and self._is_training:
            num_groundtrtuhs = tf.shape(classes)[0]
            with tf.control_dependencies([num_groundtrtuhs, is_crowds]):
                indices = tf.cond(
                    tf.greater(tf.size(is_crowds), 0),
                    lambda: tf.where(tf.logical_not(is_crowds))[:, 0],
                    lambda: tf.cast(tf.range(num_groundtrtuhs), tf.int64))
            classes = tf.gather(classes, indices)
            boxes = tf.gather(boxes, indices)
            masks = tf.gather(masks, indices)

        # If not using category, makes all categories with id = 0.
        if not self._use_category:
            classes = tf.cast(tf.greater(classes, 0), dtype=tf.float32)

        image = self.get_normalized_image(data)

        # Flips image randomly during training.
        if self._aug_rand_hflip:
            image, boxes, masks = input_utils.random_horizontal_flip(
                image, boxes, masks)

        # Converts boxes from normalized coordinates to pixel coordinates.
        image_shape = tf.shape(image)[0:2]
        boxes = box_utils.denormalize_boxes(boxes, image_shape)

        # Resizes and crops image.
        image, image_info = input_utils.resize_and_crop_image(
            image,
            self._output_size,
            self._output_size,
            aug_scale_min=self._aug_scale_min,
            aug_scale_max=self._aug_scale_max)
        self._train_image_scale = image_info[2, :]
        self._train_offset = image_info[3, :]

        # Resizes and crops boxes and masks.
        boxes = input_utils.resize_and_crop_boxes(boxes,
                                                  self._train_image_scale,
                                                  image_info[1, :],
                                                  self._train_offset)

        # Filters out ground truth boxes that are all zeros.
        indices = box_utils.get_non_empty_box_indices(boxes)
        boxes = tf.gather(boxes, indices)
        classes = tf.gather(classes, indices)
        masks = tf.gather(masks, indices)

        # Assigns anchors.
        input_anchor = anchor.Anchor(self._min_level, self._max_level,
                                     self._num_scales, self._aspect_ratios,
                                     self._anchor_size, self._output_size)
        anchor_labeler = anchor.AnchorLabeler(input_anchor,
                                              self._match_threshold,
                                              self._unmatched_threshold)
        (cls_targets, box_targets,
         num_positives) = anchor_labeler.label_anchors(
             boxes, tf.cast(tf.expand_dims(classes, axis=1), tf.float32))

        # Sample groundtruth masks/boxes/classes for mask branch.
        num_masks = tf.shape(masks)[0]
        mask_shape = tf.shape(masks)[1:3]

        # Pad sampled boxes/masks/classes to a constant batch size.
        padded_boxes = input_utils.pad_to_fixed_size(boxes,
                                                     self._num_sampled_masks)
        padded_classes = input_utils.pad_to_fixed_size(classes,
                                                       self._num_sampled_masks)
        padded_masks = input_utils.pad_to_fixed_size(masks,
                                                     self._num_sampled_masks)

        # Randomly sample groundtruth masks for mask branch training. For the image
        # without groundtruth masks, it will sample the dummy padded tensors.
        rand_indices = tf.random.shuffle(
            tf.range(tf.maximum(num_masks, self._num_sampled_masks)))
        rand_indices = tf.mod(rand_indices, tf.maximum(num_masks, 1))
        rand_indices = rand_indices[0:self._num_sampled_masks]
        rand_indices = tf.reshape(rand_indices, [self._num_sampled_masks])

        sampled_boxes = tf.gather(padded_boxes, rand_indices)
        sampled_classes = tf.gather(padded_classes, rand_indices)
        sampled_masks = tf.gather(padded_masks, rand_indices)
        # Jitter the sampled boxes to mimic the noisy detections.
        sampled_boxes = box_utils.jitter_boxes(
            sampled_boxes, noise_scale=self._box_jitter_scale)
        sampled_boxes = box_utils.clip_boxes(sampled_boxes, self._output_size)
        # Compute mask targets in feature crop. A feature crop fully contains a
        # sampled box.
        mask_outer_boxes = box_utils.compute_outer_boxes(
            sampled_boxes, tf.shape(image)[0:2], scale=self._outer_box_scale)
        mask_outer_boxes = box_utils.clip_boxes(mask_outer_boxes,
                                                self._output_size)
        # Compensate the offset of mask_outer_boxes to map it back to original image
        # scale.
        mask_outer_boxes_ori = mask_outer_boxes
        mask_outer_boxes_ori += tf.tile(
            tf.expand_dims(self._train_offset, axis=0), [1, 2])
        mask_outer_boxes_ori /= tf.tile(
            tf.expand_dims(self._train_image_scale, axis=0), [1, 2])
        norm_mask_outer_boxes_ori = box_utils.normalize_boxes(
            mask_outer_boxes_ori, mask_shape)

        # Set sampled_masks shape to [batch_size, height, width, 1].
        sampled_masks = tf.cast(tf.expand_dims(sampled_masks, axis=-1),
                                tf.float32)
        mask_targets = tf.image.crop_and_resize(
            sampled_masks,
            norm_mask_outer_boxes_ori,
            box_ind=tf.range(self._num_sampled_masks),
            crop_size=[self._mask_crop_size, self._mask_crop_size],
            method='bilinear',
            extrapolation_value=0,
            name='train_mask_targets')
        mask_targets = tf.where(tf.greater_equal(mask_targets, 0.5),
                                tf.ones_like(mask_targets),
                                tf.zeros_like(mask_targets))
        mask_targets = tf.squeeze(mask_targets, axis=-1)
        if self._up_sample_factor > 1:
            fine_mask_targets = tf.image.crop_and_resize(
                sampled_masks,
                norm_mask_outer_boxes_ori,
                box_ind=tf.range(self._num_sampled_masks),
                crop_size=[
                    self._mask_crop_size * self._up_sample_factor,
                    self._mask_crop_size * self._up_sample_factor
                ],
                method='bilinear',
                extrapolation_value=0,
                name='train_mask_targets')
            fine_mask_targets = tf.where(
                tf.greater_equal(fine_mask_targets, 0.5),
                tf.ones_like(fine_mask_targets),
                tf.zeros_like(fine_mask_targets))
            fine_mask_targets = tf.squeeze(fine_mask_targets, axis=-1)
        else:
            fine_mask_targets = mask_targets

        # If bfloat16 is used, casts input image to tf.bfloat16.
        if self._use_bfloat16:
            image = tf.cast(image, dtype=tf.bfloat16)

        valid_image = tf.cast(tf.not_equal(num_masks, 0), tf.int32)
        if self._mask_train_class == 'all':
            mask_is_valid = valid_image * tf.ones_like(sampled_classes,
                                                       tf.int32)
        else:
            # Get the intersection of sampled classes with training splits.
            mask_valid_classes = tf.cast(
                tf.expand_dims(
                    class_utils.coco_split_class_ids(self._mask_train_class),
                    1), sampled_classes.dtype)
            match = tf.reduce_any(
                tf.equal(tf.expand_dims(sampled_classes, 0),
                         mask_valid_classes), 0)
            mask_is_valid = valid_image * tf.cast(match, tf.int32)

        # Packs labels for model_fn outputs.
        labels = {
            'cls_targets': cls_targets,
            'box_targets': box_targets,
            'anchor_boxes': input_anchor.multilevel_boxes,
            'num_positives': num_positives,
            'image_info': image_info,
            # For ShapeMask.
            'mask_boxes': sampled_boxes,
            'mask_outer_boxes': mask_outer_boxes,
            'mask_targets': mask_targets,
            'fine_mask_targets': fine_mask_targets,
            'mask_classes': sampled_classes,
            'mask_is_valid': mask_is_valid,
        }
        return image, labels