Python mmdet.core.anchor_target() Examples

The following are 12 code examples of mmdet.core.anchor_target(). You can vote up the ones you like or vote down the ones you don't like, and go to the original project or source file by following the links above each example. You may also want to check out all available functions/classes of the module mmdet.core , or try the search function .
Example #1
Source File: ssd_head.py    From GCNet with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #2
Source File: ssd_head.py    From mmdetection-annotated with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #3
Source File: ssd_head.py    From PolarMask with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #4
Source File: ssd_head.py    From kaggle-kuzushiji-recognition with MIT License 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #5
Source File: ssd_head.py    From RDSNet with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #6
Source File: ssd_head.py    From IoU-Uniform-R-CNN with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        device = cls_scores[0].device

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas, device=device)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #7
Source File: ssd_head.py    From Libra_R-CNN with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #8
Source File: ssd_head.py    From FoveaBox with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #9
Source File: ssd_head.py    From Cascade-RPN with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #10
Source File: ssd_head.py    From Feature-Selective-Anchor-Free-Module-for-Single-Shot-Object-Detection with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #11
Source File: ssd_head.py    From CenterNet with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox) 
Example #12
Source File: ssd_head.py    From ttfnet with Apache License 2.0 4 votes vote down vote up
def loss(self,
             cls_scores,
             bbox_preds,
             gt_bboxes,
             gt_labels,
             img_metas,
             cfg,
             gt_bboxes_ignore=None):
        featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores]
        assert len(featmap_sizes) == len(self.anchor_generators)

        device = cls_scores[0].device

        anchor_list, valid_flag_list = self.get_anchors(
            featmap_sizes, img_metas, device=device)
        cls_reg_targets = anchor_target(
            anchor_list,
            valid_flag_list,
            gt_bboxes,
            img_metas,
            self.target_means,
            self.target_stds,
            cfg,
            gt_bboxes_ignore_list=gt_bboxes_ignore,
            gt_labels_list=gt_labels,
            label_channels=1,
            sampling=False,
            unmap_outputs=False)
        if cls_reg_targets is None:
            return None
        (labels_list, label_weights_list, bbox_targets_list, bbox_weights_list,
         num_total_pos, num_total_neg) = cls_reg_targets

        num_images = len(img_metas)
        all_cls_scores = torch.cat([
            s.permute(0, 2, 3, 1).reshape(
                num_images, -1, self.cls_out_channels) for s in cls_scores
        ], 1)
        all_labels = torch.cat(labels_list, -1).view(num_images, -1)
        all_label_weights = torch.cat(label_weights_list,
                                      -1).view(num_images, -1)
        all_bbox_preds = torch.cat([
            b.permute(0, 2, 3, 1).reshape(num_images, -1, 4)
            for b in bbox_preds
        ], -2)
        all_bbox_targets = torch.cat(bbox_targets_list,
                                     -2).view(num_images, -1, 4)
        all_bbox_weights = torch.cat(bbox_weights_list,
                                     -2).view(num_images, -1, 4)

        losses_cls, losses_bbox = multi_apply(
            self.loss_single,
            all_cls_scores,
            all_bbox_preds,
            all_labels,
            all_label_weights,
            all_bbox_targets,
            all_bbox_weights,
            num_total_samples=num_total_pos,
            cfg=cfg)
        return dict(loss_cls=losses_cls, loss_bbox=losses_bbox)