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| import logging | |
| import sys | |
| import torch | |
| from mmdet.core import (bbox2roi, bbox_mapping, merge_aug_bboxes, | |
| merge_aug_masks, multiclass_nms) | |
| logger = logging.getLogger(__name__) | |
| if sys.version_info >= (3, 7): | |
| from mmdet.utils.contextmanagers import completed | |
| class BBoxTestMixin(object): | |
| if sys.version_info >= (3, 7): | |
| async def async_test_bboxes(self, | |
| x, | |
| img_metas, | |
| proposals, | |
| rcnn_test_cfg, | |
| rescale=False, | |
| bbox_semaphore=None, | |
| global_lock=None): | |
| """Asynchronized test for box head without augmentation.""" | |
| rois = bbox2roi(proposals) | |
| roi_feats = self.bbox_roi_extractor( | |
| x[:len(self.bbox_roi_extractor.featmap_strides)], rois) | |
| if self.with_shared_head: | |
| roi_feats = self.shared_head(roi_feats) | |
| sleep_interval = rcnn_test_cfg.get('async_sleep_interval', 0.017) | |
| async with completed( | |
| __name__, 'bbox_head_forward', | |
| sleep_interval=sleep_interval): | |
| cls_score, bbox_pred = self.bbox_head(roi_feats) | |
| img_shape = img_metas[0]['img_shape'] | |
| scale_factor = img_metas[0]['scale_factor'] | |
| det_bboxes, det_labels = self.bbox_head.get_bboxes( | |
| rois, | |
| cls_score, | |
| bbox_pred, | |
| img_shape, | |
| scale_factor, | |
| rescale=rescale, | |
| cfg=rcnn_test_cfg) | |
| return det_bboxes, det_labels | |
| def simple_test_bboxes(self, | |
| x, | |
| img_metas, | |
| proposals, | |
| rcnn_test_cfg, | |
| rescale=False): | |
| """Test only det bboxes without augmentation. | |
| Args: | |
| x (tuple[Tensor]): Feature maps of all scale level. | |
| img_metas (list[dict]): Image meta info. | |
| proposals (Tensor or List[Tensor]): Region proposals. | |
| rcnn_test_cfg (obj:`ConfigDict`): `test_cfg` of R-CNN. | |
| rescale (bool): If True, return boxes in original image space. | |
| Default: False. | |
| Returns: | |
| tuple[list[Tensor], list[Tensor]]: The first list contains | |
| the boxes of the corresponding image in a batch, each | |
| tensor has the shape (num_boxes, 5) and last dimension | |
| 5 represent (tl_x, tl_y, br_x, br_y, score). Each Tensor | |
| in the second list is the labels with shape (num_boxes, ). | |
| The length of both lists should be equal to batch_size. | |
| """ | |
| # get origin input shape to support onnx dynamic input shape | |
| if torch.onnx.is_in_onnx_export(): | |
| assert len( | |
| img_metas | |
| ) == 1, 'Only support one input image while in exporting to ONNX' | |
| img_shapes = img_metas[0]['img_shape_for_onnx'] | |
| else: | |
| img_shapes = tuple(meta['img_shape'] for meta in img_metas) | |
| scale_factors = tuple(meta['scale_factor'] for meta in img_metas) | |
| # The length of proposals of different batches may be different. | |
| # In order to form a batch, a padding operation is required. | |
| if isinstance(proposals, list): | |
| # padding to form a batch | |
| max_size = max([proposal.size(0) for proposal in proposals]) | |
| for i, proposal in enumerate(proposals): | |
| supplement = proposal.new_full( | |
| (max_size - proposal.size(0), proposal.size(1)), 0) | |
| proposals[i] = torch.cat((supplement, proposal), dim=0) | |
| rois = torch.stack(proposals, dim=0) | |
| else: | |
| rois = proposals | |
| batch_index = torch.arange( | |
| rois.size(0), device=rois.device).float().view(-1, 1, 1).expand( | |
| rois.size(0), rois.size(1), 1) | |
| rois = torch.cat([batch_index, rois[..., :4]], dim=-1) | |
| batch_size = rois.shape[0] | |
| num_proposals_per_img = rois.shape[1] | |
| # Eliminate the batch dimension | |
| rois = rois.view(-1, 5) | |
| bbox_results = self._bbox_forward(x, rois) | |
| cls_score = bbox_results['cls_score'] | |
| bbox_pred = bbox_results['bbox_pred'] | |
| # Recover the batch dimension | |
| rois = rois.reshape(batch_size, num_proposals_per_img, -1) | |
| cls_score = cls_score.reshape(batch_size, num_proposals_per_img, -1) | |
| if not torch.onnx.is_in_onnx_export(): | |
| # remove padding | |
| supplement_mask = rois[..., -1] == 0 | |
| cls_score[supplement_mask, :] = 0 | |
| # bbox_pred would be None in some detector when with_reg is False, | |
| # e.g. Grid R-CNN. | |
| if bbox_pred is not None: | |
| # the bbox prediction of some detectors like SABL is not Tensor | |
| if isinstance(bbox_pred, torch.Tensor): | |
| bbox_pred = bbox_pred.reshape(batch_size, | |
| num_proposals_per_img, -1) | |
| if not torch.onnx.is_in_onnx_export(): | |
| bbox_pred[supplement_mask, :] = 0 | |
| else: | |
| # TODO: Looking forward to a better way | |
| # For SABL | |
| bbox_preds = self.bbox_head.bbox_pred_split( | |
| bbox_pred, num_proposals_per_img) | |
| # apply bbox post-processing to each image individually | |
| det_bboxes = [] | |
| det_labels = [] | |
| for i in range(len(proposals)): | |
| # remove padding | |
| supplement_mask = proposals[i][..., -1] == 0 | |
| for bbox in bbox_preds[i]: | |
| bbox[supplement_mask] = 0 | |
| det_bbox, det_label = self.bbox_head.get_bboxes( | |
| rois[i], | |
| cls_score[i], | |
| bbox_preds[i], | |
| img_shapes[i], | |
| scale_factors[i], | |
| rescale=rescale, | |
| cfg=rcnn_test_cfg) | |
| det_bboxes.append(det_bbox) | |
| det_labels.append(det_label) | |
| return det_bboxes, det_labels | |
| else: | |
| bbox_pred = None | |
| return self.bbox_head.get_bboxes( | |
| rois, | |
| cls_score, | |
| bbox_pred, | |
| img_shapes, | |
| scale_factors, | |
| rescale=rescale, | |
| cfg=rcnn_test_cfg) | |
| def aug_test_bboxes(self, feats, img_metas, proposal_list, rcnn_test_cfg): | |
| """Test det bboxes with test time augmentation.""" | |
| aug_bboxes = [] | |
| aug_scores = [] | |
| for x, img_meta in zip(feats, img_metas): | |
| # only one image in the batch | |
| img_shape = img_meta[0]['img_shape'] | |
| scale_factor = img_meta[0]['scale_factor'] | |
| flip = img_meta[0]['flip'] | |
| flip_direction = img_meta[0]['flip_direction'] | |
| # TODO more flexible | |
| proposals = bbox_mapping(proposal_list[0][:, :4], img_shape, | |
| scale_factor, flip, flip_direction) | |
| rois = bbox2roi([proposals]) | |
| bbox_results = self._bbox_forward(x, rois) | |
| bboxes, scores = self.bbox_head.get_bboxes( | |
| rois, | |
| bbox_results['cls_score'], | |
| bbox_results['bbox_pred'], | |
| img_shape, | |
| scale_factor, | |
| rescale=False, | |
| cfg=None) | |
| aug_bboxes.append(bboxes) | |
| aug_scores.append(scores) | |
| # after merging, bboxes will be rescaled to the original image size | |
| merged_bboxes, merged_scores = merge_aug_bboxes( | |
| aug_bboxes, aug_scores, img_metas, rcnn_test_cfg) | |
| det_bboxes, det_labels = multiclass_nms(merged_bboxes, merged_scores, | |
| rcnn_test_cfg.score_thr, | |
| rcnn_test_cfg.nms, | |
| rcnn_test_cfg.max_per_img) | |
| return det_bboxes, det_labels | |
| class MaskTestMixin(object): | |
| if sys.version_info >= (3, 7): | |
| async def async_test_mask(self, | |
| x, | |
| img_metas, | |
| det_bboxes, | |
| det_labels, | |
| rescale=False, | |
| mask_test_cfg=None): | |
| """Asynchronized test for mask head without augmentation.""" | |
| # image shape of the first image in the batch (only one) | |
| ori_shape = img_metas[0]['ori_shape'] | |
| scale_factor = img_metas[0]['scale_factor'] | |
| if det_bboxes.shape[0] == 0: | |
| segm_result = [[] for _ in range(self.mask_head.num_classes)] | |
| else: | |
| if rescale and not isinstance(scale_factor, | |
| (float, torch.Tensor)): | |
| scale_factor = det_bboxes.new_tensor(scale_factor) | |
| _bboxes = ( | |
| det_bboxes[:, :4] * | |
| scale_factor if rescale else det_bboxes) | |
| mask_rois = bbox2roi([_bboxes]) | |
| mask_feats = self.mask_roi_extractor( | |
| x[:len(self.mask_roi_extractor.featmap_strides)], | |
| mask_rois) | |
| if self.with_shared_head: | |
| mask_feats = self.shared_head(mask_feats) | |
| if mask_test_cfg and mask_test_cfg.get('async_sleep_interval'): | |
| sleep_interval = mask_test_cfg['async_sleep_interval'] | |
| else: | |
| sleep_interval = 0.035 | |
| async with completed( | |
| __name__, | |
| 'mask_head_forward', | |
| sleep_interval=sleep_interval): | |
| mask_pred = self.mask_head(mask_feats) | |
| segm_result = self.mask_head.get_seg_masks( | |
| mask_pred, _bboxes, det_labels, self.test_cfg, ori_shape, | |
| scale_factor, rescale) | |
| return segm_result | |
| def simple_test_mask(self, | |
| x, | |
| img_metas, | |
| det_bboxes, | |
| det_labels, | |
| rescale=False): | |
| """Simple test for mask head without augmentation.""" | |
| # image shapes of images in the batch | |
| ori_shapes = tuple(meta['ori_shape'] for meta in img_metas) | |
| scale_factors = tuple(meta['scale_factor'] for meta in img_metas) | |
| # The length of proposals of different batches may be different. | |
| # In order to form a batch, a padding operation is required. | |
| if isinstance(det_bboxes, list): | |
| # padding to form a batch | |
| max_size = max([bboxes.size(0) for bboxes in det_bboxes]) | |
| for i, (bbox, label) in enumerate(zip(det_bboxes, det_labels)): | |
| supplement_bbox = bbox.new_full( | |
| (max_size - bbox.size(0), bbox.size(1)), 0) | |
| supplement_label = label.new_full((max_size - label.size(0), ), | |
| 0) | |
| det_bboxes[i] = torch.cat((supplement_bbox, bbox), dim=0) | |
| det_labels[i] = torch.cat((supplement_label, label), dim=0) | |
| det_bboxes = torch.stack(det_bboxes, dim=0) | |
| det_labels = torch.stack(det_labels, dim=0) | |
| batch_size = det_bboxes.size(0) | |
| num_proposals_per_img = det_bboxes.shape[1] | |
| # if det_bboxes is rescaled to the original image size, we need to | |
| # rescale it back to the testing scale to obtain RoIs. | |
| det_bboxes = det_bboxes[..., :4] | |
| if rescale: | |
| if not isinstance(scale_factors[0], float): | |
| scale_factors = det_bboxes.new_tensor(scale_factors) | |
| det_bboxes = det_bboxes * scale_factors.unsqueeze(1) | |
| batch_index = torch.arange( | |
| det_bboxes.size(0), device=det_bboxes.device).float().view( | |
| -1, 1, 1).expand(det_bboxes.size(0), det_bboxes.size(1), 1) | |
| mask_rois = torch.cat([batch_index, det_bboxes], dim=-1) | |
| mask_rois = mask_rois.view(-1, 5) | |
| mask_results = self._mask_forward(x, mask_rois) | |
| mask_pred = mask_results['mask_pred'] | |
| # Recover the batch dimension | |
| mask_preds = mask_pred.reshape(batch_size, num_proposals_per_img, | |
| *mask_pred.shape[1:]) | |
| # apply mask post-processing to each image individually | |
| segm_results = [] | |
| for i in range(batch_size): | |
| mask_pred = mask_preds[i] | |
| det_bbox = det_bboxes[i] | |
| det_label = det_labels[i] | |
| # remove padding | |
| supplement_mask = det_bbox[..., -1] != 0 | |
| mask_pred = mask_pred[supplement_mask] | |
| det_bbox = det_bbox[supplement_mask] | |
| det_label = det_label[supplement_mask] | |
| if det_label.shape[0] == 0: | |
| segm_results.append([[] | |
| for _ in range(self.mask_head.num_classes) | |
| ]) | |
| else: | |
| segm_result = self.mask_head.get_seg_masks( | |
| mask_pred, det_bbox, det_label, self.test_cfg, | |
| ori_shapes[i], scale_factors[i], rescale) | |
| segm_results.append(segm_result) | |
| return segm_results | |
| def aug_test_mask(self, feats, img_metas, det_bboxes, det_labels): | |
| """Test for mask head with test time augmentation.""" | |
| if det_bboxes.shape[0] == 0: | |
| segm_result = [[] for _ in range(self.mask_head.num_classes)] | |
| else: | |
| aug_masks = [] | |
| for x, img_meta in zip(feats, img_metas): | |
| img_shape = img_meta[0]['img_shape'] | |
| scale_factor = img_meta[0]['scale_factor'] | |
| flip = img_meta[0]['flip'] | |
| flip_direction = img_meta[0]['flip_direction'] | |
| _bboxes = bbox_mapping(det_bboxes[:, :4], img_shape, | |
| scale_factor, flip, flip_direction) | |
| mask_rois = bbox2roi([_bboxes]) | |
| mask_results = self._mask_forward(x, mask_rois) | |
| # convert to numpy array to save memory | |
| aug_masks.append( | |
| mask_results['mask_pred'].sigmoid().cpu().numpy()) | |
| merged_masks = merge_aug_masks(aug_masks, img_metas, self.test_cfg) | |
| ori_shape = img_metas[0][0]['ori_shape'] | |
| segm_result = self.mask_head.get_seg_masks( | |
| merged_masks, | |
| det_bboxes, | |
| det_labels, | |
| self.test_cfg, | |
| ori_shape, | |
| scale_factor=1.0, | |
| rescale=False) | |
| return segm_result | |