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| import torch | |
| import torch.nn as nn | |
| from mmcv.cnn import ConvModule, normal_init | |
| from mmcv.ops import DeformConv2d | |
| from mmdet.core import multi_apply, multiclass_nms | |
| from ..builder import HEADS | |
| from .anchor_free_head import AnchorFreeHead | |
| INF = 1e8 | |
| class FeatureAlign(nn.Module): | |
| def __init__(self, | |
| in_channels, | |
| out_channels, | |
| kernel_size=3, | |
| deform_groups=4): | |
| super(FeatureAlign, self).__init__() | |
| offset_channels = kernel_size * kernel_size * 2 | |
| self.conv_offset = nn.Conv2d( | |
| 4, deform_groups * offset_channels, 1, bias=False) | |
| self.conv_adaption = DeformConv2d( | |
| in_channels, | |
| out_channels, | |
| kernel_size=kernel_size, | |
| padding=(kernel_size - 1) // 2, | |
| deform_groups=deform_groups) | |
| self.relu = nn.ReLU(inplace=True) | |
| def init_weights(self): | |
| normal_init(self.conv_offset, std=0.1) | |
| normal_init(self.conv_adaption, std=0.01) | |
| def forward(self, x, shape): | |
| offset = self.conv_offset(shape) | |
| x = self.relu(self.conv_adaption(x, offset)) | |
| return x | |
| class FoveaHead(AnchorFreeHead): | |
| """FoveaBox: Beyond Anchor-based Object Detector | |
| https://arxiv.org/abs/1904.03797 | |
| """ | |
| def __init__(self, | |
| num_classes, | |
| in_channels, | |
| base_edge_list=(16, 32, 64, 128, 256), | |
| scale_ranges=((8, 32), (16, 64), (32, 128), (64, 256), (128, | |
| 512)), | |
| sigma=0.4, | |
| with_deform=False, | |
| deform_groups=4, | |
| **kwargs): | |
| self.base_edge_list = base_edge_list | |
| self.scale_ranges = scale_ranges | |
| self.sigma = sigma | |
| self.with_deform = with_deform | |
| self.deform_groups = deform_groups | |
| super().__init__(num_classes, in_channels, **kwargs) | |
| def _init_layers(self): | |
| # box branch | |
| super()._init_reg_convs() | |
| self.conv_reg = nn.Conv2d(self.feat_channels, 4, 3, padding=1) | |
| # cls branch | |
| if not self.with_deform: | |
| super()._init_cls_convs() | |
| self.conv_cls = nn.Conv2d( | |
| self.feat_channels, self.cls_out_channels, 3, padding=1) | |
| else: | |
| self.cls_convs = nn.ModuleList() | |
| self.cls_convs.append( | |
| ConvModule( | |
| self.feat_channels, (self.feat_channels * 4), | |
| 3, | |
| stride=1, | |
| padding=1, | |
| conv_cfg=self.conv_cfg, | |
| norm_cfg=self.norm_cfg, | |
| bias=self.norm_cfg is None)) | |
| self.cls_convs.append( | |
| ConvModule((self.feat_channels * 4), (self.feat_channels * 4), | |
| 1, | |
| stride=1, | |
| padding=0, | |
| conv_cfg=self.conv_cfg, | |
| norm_cfg=self.norm_cfg, | |
| bias=self.norm_cfg is None)) | |
| self.feature_adaption = FeatureAlign( | |
| self.feat_channels, | |
| self.feat_channels, | |
| kernel_size=3, | |
| deform_groups=self.deform_groups) | |
| self.conv_cls = nn.Conv2d( | |
| int(self.feat_channels * 4), | |
| self.cls_out_channels, | |
| 3, | |
| padding=1) | |
| def init_weights(self): | |
| super().init_weights() | |
| if self.with_deform: | |
| self.feature_adaption.init_weights() | |
| def forward_single(self, x): | |
| cls_feat = x | |
| reg_feat = x | |
| for reg_layer in self.reg_convs: | |
| reg_feat = reg_layer(reg_feat) | |
| bbox_pred = self.conv_reg(reg_feat) | |
| if self.with_deform: | |
| cls_feat = self.feature_adaption(cls_feat, bbox_pred.exp()) | |
| for cls_layer in self.cls_convs: | |
| cls_feat = cls_layer(cls_feat) | |
| cls_score = self.conv_cls(cls_feat) | |
| return cls_score, bbox_pred | |
| def _get_points_single(self, *args, **kwargs): | |
| y, x = super()._get_points_single(*args, **kwargs) | |
| return y + 0.5, x + 0.5 | |
| def loss(self, | |
| cls_scores, | |
| bbox_preds, | |
| gt_bbox_list, | |
| gt_label_list, | |
| img_metas, | |
| gt_bboxes_ignore=None): | |
| assert len(cls_scores) == len(bbox_preds) | |
| featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores] | |
| points = self.get_points(featmap_sizes, bbox_preds[0].dtype, | |
| bbox_preds[0].device) | |
| num_imgs = cls_scores[0].size(0) | |
| flatten_cls_scores = [ | |
| cls_score.permute(0, 2, 3, 1).reshape(-1, self.cls_out_channels) | |
| for cls_score in cls_scores | |
| ] | |
| flatten_bbox_preds = [ | |
| bbox_pred.permute(0, 2, 3, 1).reshape(-1, 4) | |
| for bbox_pred in bbox_preds | |
| ] | |
| flatten_cls_scores = torch.cat(flatten_cls_scores) | |
| flatten_bbox_preds = torch.cat(flatten_bbox_preds) | |
| flatten_labels, flatten_bbox_targets = self.get_targets( | |
| gt_bbox_list, gt_label_list, featmap_sizes, points) | |
| # FG cat_id: [0, num_classes -1], BG cat_id: num_classes | |
| pos_inds = ((flatten_labels >= 0) | |
| & (flatten_labels < self.num_classes)).nonzero().view(-1) | |
| num_pos = len(pos_inds) | |
| loss_cls = self.loss_cls( | |
| flatten_cls_scores, flatten_labels, avg_factor=num_pos + num_imgs) | |
| if num_pos > 0: | |
| pos_bbox_preds = flatten_bbox_preds[pos_inds] | |
| pos_bbox_targets = flatten_bbox_targets[pos_inds] | |
| pos_weights = pos_bbox_targets.new_zeros( | |
| pos_bbox_targets.size()) + 1.0 | |
| loss_bbox = self.loss_bbox( | |
| pos_bbox_preds, | |
| pos_bbox_targets, | |
| pos_weights, | |
| avg_factor=num_pos) | |
| else: | |
| loss_bbox = torch.tensor( | |
| 0, | |
| dtype=flatten_bbox_preds.dtype, | |
| device=flatten_bbox_preds.device) | |
| return dict(loss_cls=loss_cls, loss_bbox=loss_bbox) | |
| def get_targets(self, gt_bbox_list, gt_label_list, featmap_sizes, points): | |
| label_list, bbox_target_list = multi_apply( | |
| self._get_target_single, | |
| gt_bbox_list, | |
| gt_label_list, | |
| featmap_size_list=featmap_sizes, | |
| point_list=points) | |
| flatten_labels = [ | |
| torch.cat([ | |
| labels_level_img.flatten() for labels_level_img in labels_level | |
| ]) for labels_level in zip(*label_list) | |
| ] | |
| flatten_bbox_targets = [ | |
| torch.cat([ | |
| bbox_targets_level_img.reshape(-1, 4) | |
| for bbox_targets_level_img in bbox_targets_level | |
| ]) for bbox_targets_level in zip(*bbox_target_list) | |
| ] | |
| flatten_labels = torch.cat(flatten_labels) | |
| flatten_bbox_targets = torch.cat(flatten_bbox_targets) | |
| return flatten_labels, flatten_bbox_targets | |
| def _get_target_single(self, | |
| gt_bboxes_raw, | |
| gt_labels_raw, | |
| featmap_size_list=None, | |
| point_list=None): | |
| gt_areas = torch.sqrt((gt_bboxes_raw[:, 2] - gt_bboxes_raw[:, 0]) * | |
| (gt_bboxes_raw[:, 3] - gt_bboxes_raw[:, 1])) | |
| label_list = [] | |
| bbox_target_list = [] | |
| # for each pyramid, find the cls and box target | |
| for base_len, (lower_bound, upper_bound), stride, featmap_size, \ | |
| (y, x) in zip(self.base_edge_list, self.scale_ranges, | |
| self.strides, featmap_size_list, point_list): | |
| # FG cat_id: [0, num_classes -1], BG cat_id: num_classes | |
| labels = gt_labels_raw.new_zeros(featmap_size) + self.num_classes | |
| bbox_targets = gt_bboxes_raw.new(featmap_size[0], featmap_size[1], | |
| 4) + 1 | |
| # scale assignment | |
| hit_indices = ((gt_areas >= lower_bound) & | |
| (gt_areas <= upper_bound)).nonzero().flatten() | |
| if len(hit_indices) == 0: | |
| label_list.append(labels) | |
| bbox_target_list.append(torch.log(bbox_targets)) | |
| continue | |
| _, hit_index_order = torch.sort(-gt_areas[hit_indices]) | |
| hit_indices = hit_indices[hit_index_order] | |
| gt_bboxes = gt_bboxes_raw[hit_indices, :] / stride | |
| gt_labels = gt_labels_raw[hit_indices] | |
| half_w = 0.5 * (gt_bboxes[:, 2] - gt_bboxes[:, 0]) | |
| half_h = 0.5 * (gt_bboxes[:, 3] - gt_bboxes[:, 1]) | |
| # valid fovea area: left, right, top, down | |
| pos_left = torch.ceil( | |
| gt_bboxes[:, 0] + (1 - self.sigma) * half_w - 0.5).long().\ | |
| clamp(0, featmap_size[1] - 1) | |
| pos_right = torch.floor( | |
| gt_bboxes[:, 0] + (1 + self.sigma) * half_w - 0.5).long().\ | |
| clamp(0, featmap_size[1] - 1) | |
| pos_top = torch.ceil( | |
| gt_bboxes[:, 1] + (1 - self.sigma) * half_h - 0.5).long().\ | |
| clamp(0, featmap_size[0] - 1) | |
| pos_down = torch.floor( | |
| gt_bboxes[:, 1] + (1 + self.sigma) * half_h - 0.5).long().\ | |
| clamp(0, featmap_size[0] - 1) | |
| for px1, py1, px2, py2, label, (gt_x1, gt_y1, gt_x2, gt_y2) in \ | |
| zip(pos_left, pos_top, pos_right, pos_down, gt_labels, | |
| gt_bboxes_raw[hit_indices, :]): | |
| labels[py1:py2 + 1, px1:px2 + 1] = label | |
| bbox_targets[py1:py2 + 1, px1:px2 + 1, 0] = \ | |
| (stride * x[py1:py2 + 1, px1:px2 + 1] - gt_x1) / base_len | |
| bbox_targets[py1:py2 + 1, px1:px2 + 1, 1] = \ | |
| (stride * y[py1:py2 + 1, px1:px2 + 1] - gt_y1) / base_len | |
| bbox_targets[py1:py2 + 1, px1:px2 + 1, 2] = \ | |
| (gt_x2 - stride * x[py1:py2 + 1, px1:px2 + 1]) / base_len | |
| bbox_targets[py1:py2 + 1, px1:px2 + 1, 3] = \ | |
| (gt_y2 - stride * y[py1:py2 + 1, px1:px2 + 1]) / base_len | |
| bbox_targets = bbox_targets.clamp(min=1. / 16, max=16.) | |
| label_list.append(labels) | |
| bbox_target_list.append(torch.log(bbox_targets)) | |
| return label_list, bbox_target_list | |
| def get_bboxes(self, | |
| cls_scores, | |
| bbox_preds, | |
| img_metas, | |
| cfg=None, | |
| rescale=None): | |
| assert len(cls_scores) == len(bbox_preds) | |
| num_levels = len(cls_scores) | |
| featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores] | |
| points = self.get_points( | |
| featmap_sizes, | |
| bbox_preds[0].dtype, | |
| bbox_preds[0].device, | |
| flatten=True) | |
| result_list = [] | |
| for img_id in range(len(img_metas)): | |
| cls_score_list = [ | |
| cls_scores[i][img_id].detach() for i in range(num_levels) | |
| ] | |
| bbox_pred_list = [ | |
| bbox_preds[i][img_id].detach() for i in range(num_levels) | |
| ] | |
| img_shape = img_metas[img_id]['img_shape'] | |
| scale_factor = img_metas[img_id]['scale_factor'] | |
| det_bboxes = self._get_bboxes_single(cls_score_list, | |
| bbox_pred_list, featmap_sizes, | |
| points, img_shape, | |
| scale_factor, cfg, rescale) | |
| result_list.append(det_bboxes) | |
| return result_list | |
| def _get_bboxes_single(self, | |
| cls_scores, | |
| bbox_preds, | |
| featmap_sizes, | |
| point_list, | |
| img_shape, | |
| scale_factor, | |
| cfg, | |
| rescale=False): | |
| cfg = self.test_cfg if cfg is None else cfg | |
| assert len(cls_scores) == len(bbox_preds) == len(point_list) | |
| det_bboxes = [] | |
| det_scores = [] | |
| for cls_score, bbox_pred, featmap_size, stride, base_len, (y, x) \ | |
| in zip(cls_scores, bbox_preds, featmap_sizes, self.strides, | |
| self.base_edge_list, point_list): | |
| assert cls_score.size()[-2:] == bbox_pred.size()[-2:] | |
| scores = cls_score.permute(1, 2, 0).reshape( | |
| -1, self.cls_out_channels).sigmoid() | |
| bbox_pred = bbox_pred.permute(1, 2, 0).reshape(-1, 4).exp() | |
| nms_pre = cfg.get('nms_pre', -1) | |
| if (nms_pre > 0) and (scores.shape[0] > nms_pre): | |
| max_scores, _ = scores.max(dim=1) | |
| _, topk_inds = max_scores.topk(nms_pre) | |
| bbox_pred = bbox_pred[topk_inds, :] | |
| scores = scores[topk_inds, :] | |
| y = y[topk_inds] | |
| x = x[topk_inds] | |
| x1 = (stride * x - base_len * bbox_pred[:, 0]).\ | |
| clamp(min=0, max=img_shape[1] - 1) | |
| y1 = (stride * y - base_len * bbox_pred[:, 1]).\ | |
| clamp(min=0, max=img_shape[0] - 1) | |
| x2 = (stride * x + base_len * bbox_pred[:, 2]).\ | |
| clamp(min=0, max=img_shape[1] - 1) | |
| y2 = (stride * y + base_len * bbox_pred[:, 3]).\ | |
| clamp(min=0, max=img_shape[0] - 1) | |
| bboxes = torch.stack([x1, y1, x2, y2], -1) | |
| det_bboxes.append(bboxes) | |
| det_scores.append(scores) | |
| det_bboxes = torch.cat(det_bboxes) | |
| if rescale: | |
| det_bboxes /= det_bboxes.new_tensor(scale_factor) | |
| det_scores = torch.cat(det_scores) | |
| padding = det_scores.new_zeros(det_scores.shape[0], 1) | |
| # remind that we set FG labels to [0, num_class-1] since mmdet v2.0 | |
| # BG cat_id: num_class | |
| det_scores = torch.cat([det_scores, padding], dim=1) | |
| det_bboxes, det_labels = multiclass_nms(det_bboxes, det_scores, | |
| cfg.score_thr, cfg.nms, | |
| cfg.max_per_img) | |
| return det_bboxes, det_labels | |