double_head_rcnn.py 7.28 KB
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import torch

from mmdet.core import bbox2roi, build_assigner, build_sampler
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from ..registry import DETECTORS
from .two_stage import TwoStageDetector
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@DETECTORS.register_module
class DoubleHeadRCNN(TwoStageDetector):

    def __init__(self, reg_roi_scale_factor, **kwargs):
        super().__init__(**kwargs)
        self.reg_roi_scale_factor = reg_roi_scale_factor

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    def forward_dummy(self, img):
        outs = ()
        # backbone
        x = self.extract_feat(img)
        # rpn
        if self.with_rpn:
            rpn_outs = self.rpn_head(x)
            outs = outs + (rpn_outs, )
        proposals = torch.randn(1000, 4).cuda()
        # bbox head
        rois = bbox2roi([proposals])
        bbox_cls_feats = self.bbox_roi_extractor(
            x[:self.bbox_roi_extractor.num_inputs], rois)
        bbox_reg_feats = self.bbox_roi_extractor(
            x[:self.bbox_roi_extractor.num_inputs],
            rois,
            roi_scale_factor=self.reg_roi_scale_factor)
        if self.with_shared_head:
            bbox_cls_feats = self.shared_head(bbox_cls_feats)
            bbox_reg_feats = self.shared_head(bbox_reg_feats)
        cls_score, bbox_pred = self.bbox_head(bbox_cls_feats, bbox_reg_feats)
        outs += (cls_score, bbox_pred)
        return outs

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    def forward_train(self,
                      img,
                      img_meta,
                      gt_bboxes,
                      gt_labels,
                      gt_bboxes_ignore=None,
                      gt_masks=None,
                      proposals=None):
        x = self.extract_feat(img)

        losses = dict()

        # RPN forward and loss
        if self.with_rpn:
            rpn_outs = self.rpn_head(x)
            rpn_loss_inputs = rpn_outs + (gt_bboxes, img_meta,
                                          self.train_cfg.rpn)
            rpn_losses = self.rpn_head.loss(
                *rpn_loss_inputs, gt_bboxes_ignore=gt_bboxes_ignore)
            losses.update(rpn_losses)

            proposal_cfg = self.train_cfg.get('rpn_proposal',
                                              self.test_cfg.rpn)
            proposal_inputs = rpn_outs + (img_meta, proposal_cfg)
            proposal_list = self.rpn_head.get_bboxes(*proposal_inputs)
        else:
            proposal_list = proposals

        # assign gts and sample proposals
        if self.with_bbox or self.with_mask:
            bbox_assigner = build_assigner(self.train_cfg.rcnn.assigner)
            bbox_sampler = build_sampler(
                self.train_cfg.rcnn.sampler, context=self)
            num_imgs = img.size(0)
            if gt_bboxes_ignore is None:
                gt_bboxes_ignore = [None for _ in range(num_imgs)]
            sampling_results = []
            for i in range(num_imgs):
                assign_result = bbox_assigner.assign(proposal_list[i],
                                                     gt_bboxes[i],
                                                     gt_bboxes_ignore[i],
                                                     gt_labels[i])
                sampling_result = bbox_sampler.sample(
                    assign_result,
                    proposal_list[i],
                    gt_bboxes[i],
                    gt_labels[i],
                    feats=[lvl_feat[i][None] for lvl_feat in x])
                sampling_results.append(sampling_result)

        # bbox head forward and loss
        if self.with_bbox:
            rois = bbox2roi([res.bboxes for res in sampling_results])
            # TODO: a more flexible way to decide which feature maps to use
            bbox_cls_feats = self.bbox_roi_extractor(
                x[:self.bbox_roi_extractor.num_inputs], rois)
            bbox_reg_feats = self.bbox_roi_extractor(
                x[:self.bbox_roi_extractor.num_inputs],
                rois,
                roi_scale_factor=self.reg_roi_scale_factor)
            if self.with_shared_head:
                bbox_cls_feats = self.shared_head(bbox_cls_feats)
                bbox_reg_feats = self.shared_head(bbox_reg_feats)
            cls_score, bbox_pred = self.bbox_head(bbox_cls_feats,
                                                  bbox_reg_feats)

            bbox_targets = self.bbox_head.get_target(sampling_results,
                                                     gt_bboxes, gt_labels,
                                                     self.train_cfg.rcnn)
            loss_bbox = self.bbox_head.loss(cls_score, bbox_pred,
                                            *bbox_targets)
            losses.update(loss_bbox)

        # mask head forward and loss
        if self.with_mask:
            if not self.share_roi_extractor:
                pos_rois = bbox2roi(
                    [res.pos_bboxes for res in sampling_results])
                mask_feats = self.mask_roi_extractor(
                    x[:self.mask_roi_extractor.num_inputs], pos_rois)
                if self.with_shared_head:
                    mask_feats = self.shared_head(mask_feats)
            else:
                pos_inds = []
                device = bbox_cls_feats.device
                for res in sampling_results:
                    pos_inds.append(
                        torch.ones(
                            res.pos_bboxes.shape[0],
                            device=device,
                            dtype=torch.uint8))
                    pos_inds.append(
                        torch.zeros(
                            res.neg_bboxes.shape[0],
                            device=device,
                            dtype=torch.uint8))
                pos_inds = torch.cat(pos_inds)
                mask_feats = bbox_cls_feats[pos_inds]
            mask_pred = self.mask_head(mask_feats)

            mask_targets = self.mask_head.get_target(sampling_results,
                                                     gt_masks,
                                                     self.train_cfg.rcnn)
            pos_labels = torch.cat(
                [res.pos_gt_labels for res in sampling_results])
            loss_mask = self.mask_head.loss(mask_pred, mask_targets,
                                            pos_labels)
            losses.update(loss_mask)

        return losses

    def simple_test_bboxes(self,
                           x,
                           img_meta,
                           proposals,
                           rcnn_test_cfg,
                           rescale=False):
        """Test only det bboxes without augmentation."""
        rois = bbox2roi(proposals)
        bbox_cls_feats = self.bbox_roi_extractor(
            x[:self.bbox_roi_extractor.num_inputs], rois)
        bbox_reg_feats = self.bbox_roi_extractor(
            x[:self.bbox_roi_extractor.num_inputs],
            rois,
            roi_scale_factor=self.reg_roi_scale_factor)
        if self.with_shared_head:
            bbox_cls_feats = self.shared_head(bbox_cls_feats)
            bbox_reg_feats = self.shared_head(bbox_reg_feats)
        cls_score, bbox_pred = self.bbox_head(bbox_cls_feats, bbox_reg_feats)
        img_shape = img_meta[0]['img_shape']
        scale_factor = img_meta[0]['scale_factor']
        det_bboxes, det_labels = self.bbox_head.get_det_bboxes(
            rois,
            cls_score,
            bbox_pred,
            img_shape,
            scale_factor,
            rescale=rescale,
            cfg=rcnn_test_cfg)
        return det_bboxes, det_labels