Example #1
0
    def forward_for_single_feature_map(self, anchors, objectness,
                                       box_regression):
        """
        Arguments:
            anchors: list[BoxList]
            objectness: tensor of size N, A, H, W
            box_regression: tensor of size N, A * 4, H, W
        """
        device = objectness.device
        N, A, H, W = objectness.shape

        # put in the same format as anchors
        objectness = permute_and_flatten(objectness, N, A, 1, H, W).view(N, -1)
        objectness = objectness.sigmoid()

        box_regression = permute_and_flatten(box_regression, N, A, 4, H, W)

        num_anchors = A * H * W

        pre_nms_top_n = min(self.pre_nms_top_n, num_anchors)
        objectness, topk_idx = objectness.topk(pre_nms_top_n,
                                               dim=1,
                                               sorted=True)

        batch_idx = torch.arange(N, device=device)[:, None]
        box_regression = box_regression[batch_idx, topk_idx]

        image_shapes = [box.size for box in anchors]
        concat_anchors = torch.cat([a.bbox for a in anchors], dim=0)
        concat_anchors = concat_anchors.reshape(N, -1, 4)[batch_idx, topk_idx]

        proposals = self.box_coder.decode(box_regression.view(-1, 4),
                                          concat_anchors.view(-1, 4))

        proposals = proposals.view(N, -1, 4)

        result = []
        for proposal, score, im_shape in zip(proposals, objectness,
                                             image_shapes):
            boxlist = BoxList(proposal, im_shape, mode="xyxy")
            boxlist.add_field("objectness", score)
            boxlist = boxlist.clip_to_image(remove_empty=False)
            boxlist = remove_small_boxes(boxlist, self.min_size)
            boxlist = boxlist_nms(
                boxlist,
                self.nms_thresh,
                max_proposals=self.post_nms_top_n,
                score_field="objectness",
            )
            result.append(boxlist)
        return result
Example #2
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 def prepare_boxlist(self, boxes, scores, image_shape):
     """
     Returns BoxList from `boxes` and adds probability scores information
     as an extra field
     `boxes` has shape (#detections, 4 * #classes), where each row represents
     a list of predicted bounding boxes for each of the object classes in the
     dataset (including the background class). The detections in each row
     originate from the same object proposal.
     `scores` has shape (#detection, #classes), where each row represents a list
     of object detection confidence scores for each of the object classes in the
     dataset (including the background class). `scores[i, j]`` corresponds to the
     box at `boxes[i, j * 4:(j + 1) * 4]`.
     """
     boxes = boxes.reshape(-1, 4)
     scores = scores.reshape(-1)
     boxlist = BoxList(boxes, image_shape, mode="xyxy")
     boxlist.add_field("scores", scores)
     return boxlist
Example #3
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    def forward(self, x, boxes):
        """
        Arguments:
            x (Tensor): the mask logits
            boxes (list[BoxList]): bounding boxes that are used as
                reference, one for ech image

        Returns:
            results (list[BoxList]): one BoxList for each image, containing
                the extra field mask
        """
        mask_prob = x.sigmoid()

        # select masks coresponding to the predicted classes
        num_masks = x.shape[0]
        labels = [bbox.get_field("labels") for bbox in boxes]
        labels = torch.cat(labels)
        index = torch.arange(num_masks, device=labels.device)
        mask_prob = mask_prob[index, labels][:, None]

        boxes_per_image = [len(box) for box in boxes]
        mask_prob = mask_prob.split(boxes_per_image, dim=0)

        if self.masker:
            mask_prob = self.masker(mask_prob, boxes)

        results = []
        for prob, box in zip(mask_prob, boxes):
            bbox = BoxList(box.bbox, box.size, mode="xyxy")
            for field in box.fields():
                bbox.add_field(field, box.get_field(field))
            bbox.add_field("mask", prob)
            results.append(bbox)

        return results
Example #4
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 def forward(self, image_list, feature_maps):
     grid_sizes = [feature_map.shape[-2:] for feature_map in feature_maps]
     anchors_over_all_feature_maps = self.grid_anchors(grid_sizes)
     anchors = []
     for i, (image_height,
             image_width) in enumerate(image_list.image_sizes):
         anchors_in_image = []
         for anchors_per_feature_map in anchors_over_all_feature_maps:
             boxlist = BoxList(anchors_per_feature_map,
                               (image_width, image_height),
                               mode="xyxy")
             self.add_visibility_to(boxlist)
             anchors_in_image.append(boxlist)
         anchors.append(anchors_in_image)
     return anchors
Example #5
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    def select_over_all_levels(self, boxlists):
        num_images = len(boxlists)
        results = []
        for i in range(num_images):
            scores = boxlists[i].get_field("scores")
            labels = boxlists[i].get_field("labels")
            boxes = boxlists[i].bbox
            boxlist = boxlists[i]
            result = []
            # skip the background
            for j in range(1, self.num_classes):
                inds = (labels == j).nonzero().view(-1)

                scores_j = scores[inds]
                boxes_j = boxes[inds, :].view(-1, 4)
                boxlist_for_class = BoxList(boxes_j, boxlist.size, mode="xyxy")
                boxlist_for_class.add_field("scores", scores_j)
                boxlist_for_class = boxlist_nms(
                    boxlist_for_class, self.nms_thresh,
                    score_field="scores"
                )
                num_labels = len(boxlist_for_class)
                boxlist_for_class.add_field(
                    "labels", torch.full((num_labels,), j,
                                         dtype=torch.int64,
                                         device=scores.device)
                )
                result.append(boxlist_for_class)

            result = cat_boxlist(result)
            number_of_detections = len(result)

            # Limit to max_per_image detections **over all classes**
            if number_of_detections > self.fpn_post_nms_top_n > 0:
                cls_scores = result.get_field("scores")
                image_thresh, _ = torch.kthvalue(
                    cls_scores.cpu(),
                    number_of_detections - self.fpn_post_nms_top_n + 1
                )
                keep = cls_scores >= image_thresh.item()
                keep = torch.nonzero(keep).squeeze(1)
                result = result[keep]
            results.append(result)
        return results
Example #6
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    def filter_results(self, boxlist, num_classes):
        """Returns bounding-box detection results by thresholding on scores and
        applying non-maximum suppression (NMS).
        """
        # unwrap the boxlist to avoid additional overhead.
        # if we had multi-class NMS, we could perform this directly on the boxlist
        boxes = boxlist.bbox.reshape(-1, num_classes * 4)
        scores = boxlist.get_field("scores").reshape(-1, num_classes)

        device = scores.device
        result = []
        # Apply threshold on detection probabilities and apply NMS
        # Skip j = 0, because it's the background class
        inds_all = scores > self.score_thresh
        for j in range(1, num_classes):
            inds = inds_all[:, j].nonzero().squeeze(1)
            scores_j = scores[inds, j]
            boxes_j = boxes[inds, j * 4:(j + 1) * 4]
            boxlist_for_class = BoxList(boxes_j, boxlist.size, mode="xyxy")
            boxlist_for_class.add_field("scores", scores_j)
            boxlist_for_class = boxlist_nms(boxlist_for_class, self.nms)
            num_labels = len(boxlist_for_class)
            boxlist_for_class.add_field(
                "labels",
                torch.full((num_labels, ), j, dtype=torch.int64,
                           device=device))
            result.append(boxlist_for_class)

        result = cat_boxlist(result)
        number_of_detections = len(result)

        # Limit to max_per_image detections **over all classes**
        if number_of_detections > self.detections_per_img > 0:
            cls_scores = result.get_field("scores")
            image_thresh, _ = torch.kthvalue(
                cls_scores.cpu(),
                number_of_detections - self.detections_per_img + 1)
            keep = cls_scores >= image_thresh.item()
            keep = torch.nonzero(keep).squeeze(1)
            result = result[keep]
        return result
Example #7
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    def forward(self, x, boxes):
        mask_prob = x

        scores = None
        if self.keypointer:
            mask_prob, scores = self.keypointer(x, boxes)

        assert len(boxes) == 1, "Only non-batched inference supported for now"
        boxes_per_image = [box.bbox.size(0) for box in boxes]
        mask_prob = mask_prob.split(boxes_per_image, dim=0)
        scores = scores.split(boxes_per_image, dim=0)

        results = []
        for prob, box, score in zip(mask_prob, boxes, scores):
            bbox = BoxList(box.bbox, box.size, mode="xyxy")
            for field in box.fields():
                bbox.add_field(field, box.get_field(field))
            prob = PersonKeypoints(prob, box.size)
            prob.add_field("logits", score)
            bbox.add_field("keypoints", prob)
            results.append(bbox)

        return results
Example #8
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    def forward_for_single_feature_map(
            self, anchors, box_cls, box_regression):
        """
        Arguments:
            anchors: list[BoxList]
            box_cls: tensor of size N, A * C, H, W
            box_regression: tensor of size N, A * 4, H, W
        """
        device = box_cls.device
        N, _, H, W = box_cls.shape
        A = box_regression.size(1) // 4
        C = box_cls.size(1) // A

        # put in the same format as anchors
        box_cls = permute_and_flatten(box_cls, N, A, C, H, W)
        box_cls = box_cls.sigmoid()

        box_regression = permute_and_flatten(box_regression, N, A, 4, H, W)
        box_regression = box_regression.reshape(N, -1, 4)

        num_anchors = A * H * W

        candidate_inds = box_cls > self.pre_nms_thresh

        pre_nms_top_n = candidate_inds.view(N, -1).sum(1)
        pre_nms_top_n = pre_nms_top_n.clamp(max=self.pre_nms_top_n)

        results = []
        for per_box_cls, per_box_regression, per_pre_nms_top_n, \
        per_candidate_inds, per_anchors in zip(
            box_cls,
            box_regression,
            pre_nms_top_n,
            candidate_inds,
            anchors):

            # Sort and select TopN
            # TODO most of this can be made out of the loop for
            # all images. 
            # TODO:Yang: Not easy to do. Because the numbers of detections are
            # different in each image. Therefore, this part needs to be done
            # per image. 
            per_box_cls = per_box_cls[per_candidate_inds]
 
            per_box_cls, top_k_indices = \
                    per_box_cls.topk(per_pre_nms_top_n, sorted=False)

            per_candidate_nonzeros = \
                    per_candidate_inds.nonzero()[top_k_indices, :]

            per_box_loc = per_candidate_nonzeros[:, 0]
            per_class = per_candidate_nonzeros[:, 1]
            per_class += 1

            detections = self.box_coder.decode(
                per_box_regression[per_box_loc, :].view(-1, 4),
                per_anchors.bbox[per_box_loc, :].view(-1, 4)
            )

            boxlist = BoxList(detections, per_anchors.size, mode="xyxy")
            boxlist.add_field("labels", per_class)
            boxlist.add_field("scores", per_box_cls)
            boxlist = boxlist.clip_to_image(remove_empty=False)
            boxlist = remove_small_boxes(boxlist, self.min_size)
            results.append(boxlist)

        return results