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from typing import List, Tuple |
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import torch |
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from torch import Tensor |
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from mmdet.registry import MODELS |
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from mmdet.structures import SampleList |
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from mmdet.structures.bbox import bbox_overlaps |
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from mmdet.utils import ConfigType, InstanceList, OptInstanceList, reduce_mean |
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from ..utils import multi_apply, unpack_gt_instances |
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from .gfl_head import GFLHead |
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@MODELS.register_module() |
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class LDHead(GFLHead): |
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"""Localization distillation Head. (Short description) |
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It utilizes the learned bbox distributions to transfer the localization |
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dark knowledge from teacher to student. Original paper: `Localization |
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Distillation for Object Detection. <https://arxiv.org/abs/2102.12252>`_ |
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Args: |
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num_classes (int): Number of categories excluding the background |
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category. |
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in_channels (int): Number of channels in the input feature map. |
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loss_ld (:obj:`ConfigDict` or dict): Config of Localization |
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Distillation Loss (LD), T is the temperature for distillation. |
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""" |
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def __init__(self, |
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num_classes: int, |
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in_channels: int, |
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loss_ld: ConfigType = dict( |
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type='LocalizationDistillationLoss', |
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loss_weight=0.25, |
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T=10), |
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**kwargs) -> dict: |
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super().__init__( |
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num_classes=num_classes, in_channels=in_channels, **kwargs) |
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self.loss_ld = MODELS.build(loss_ld) |
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def loss_by_feat_single(self, anchors: Tensor, cls_score: Tensor, |
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bbox_pred: Tensor, labels: Tensor, |
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label_weights: Tensor, bbox_targets: Tensor, |
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stride: Tuple[int], soft_targets: Tensor, |
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avg_factor: int): |
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"""Calculate the loss of a single scale level based on the features |
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extracted by the detection head. |
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Args: |
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anchors (Tensor): Box reference for each scale level with shape |
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(N, num_total_anchors, 4). |
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cls_score (Tensor): Cls and quality joint scores for each scale |
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level has shape (N, num_classes, H, W). |
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bbox_pred (Tensor): Box distribution logits for each scale |
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level with shape (N, 4*(n+1), H, W), n is max value of integral |
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set. |
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labels (Tensor): Labels of each anchors with shape |
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(N, num_total_anchors). |
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label_weights (Tensor): Label weights of each anchor with shape |
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(N, num_total_anchors) |
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bbox_targets (Tensor): BBox regression targets of each anchor |
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weight shape (N, num_total_anchors, 4). |
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stride (tuple): Stride in this scale level. |
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soft_targets (Tensor): Soft BBox regression targets. |
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avg_factor (int): Average factor that is used to average |
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the loss. When using sampling method, avg_factor is usually |
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the sum of positive and negative priors. When using |
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`PseudoSampler`, `avg_factor` is usually equal to the number |
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of positive priors. |
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Returns: |
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dict[tuple, Tensor]: Loss components and weight targets. |
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""" |
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assert stride[0] == stride[1], 'h stride is not equal to w stride!' |
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anchors = anchors.reshape(-1, 4) |
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cls_score = cls_score.permute(0, 2, 3, |
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1).reshape(-1, self.cls_out_channels) |
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bbox_pred = bbox_pred.permute(0, 2, 3, |
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1).reshape(-1, 4 * (self.reg_max + 1)) |
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soft_targets = soft_targets.permute(0, 2, 3, |
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1).reshape(-1, |
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4 * (self.reg_max + 1)) |
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bbox_targets = bbox_targets.reshape(-1, 4) |
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labels = labels.reshape(-1) |
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label_weights = label_weights.reshape(-1) |
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bg_class_ind = self.num_classes |
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pos_inds = ((labels >= 0) |
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& (labels < bg_class_ind)).nonzero().squeeze(1) |
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score = label_weights.new_zeros(labels.shape) |
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if len(pos_inds) > 0: |
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pos_bbox_targets = bbox_targets[pos_inds] |
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pos_bbox_pred = bbox_pred[pos_inds] |
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pos_anchors = anchors[pos_inds] |
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pos_anchor_centers = self.anchor_center(pos_anchors) / stride[0] |
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weight_targets = cls_score.detach().sigmoid() |
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weight_targets = weight_targets.max(dim=1)[0][pos_inds] |
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pos_bbox_pred_corners = self.integral(pos_bbox_pred) |
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pos_decode_bbox_pred = self.bbox_coder.decode( |
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pos_anchor_centers, pos_bbox_pred_corners) |
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pos_decode_bbox_targets = pos_bbox_targets / stride[0] |
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score[pos_inds] = bbox_overlaps( |
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pos_decode_bbox_pred.detach(), |
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pos_decode_bbox_targets, |
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is_aligned=True) |
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pred_corners = pos_bbox_pred.reshape(-1, self.reg_max + 1) |
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pos_soft_targets = soft_targets[pos_inds] |
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soft_corners = pos_soft_targets.reshape(-1, self.reg_max + 1) |
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target_corners = self.bbox_coder.encode(pos_anchor_centers, |
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pos_decode_bbox_targets, |
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self.reg_max).reshape(-1) |
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loss_bbox = self.loss_bbox( |
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pos_decode_bbox_pred, |
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pos_decode_bbox_targets, |
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weight=weight_targets, |
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avg_factor=1.0) |
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loss_dfl = self.loss_dfl( |
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pred_corners, |
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target_corners, |
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weight=weight_targets[:, None].expand(-1, 4).reshape(-1), |
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avg_factor=4.0) |
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loss_ld = self.loss_ld( |
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pred_corners, |
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soft_corners, |
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weight=weight_targets[:, None].expand(-1, 4).reshape(-1), |
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avg_factor=4.0) |
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else: |
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loss_ld = bbox_pred.sum() * 0 |
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loss_bbox = bbox_pred.sum() * 0 |
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loss_dfl = bbox_pred.sum() * 0 |
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weight_targets = bbox_pred.new_tensor(0) |
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loss_cls = self.loss_cls( |
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cls_score, (labels, score), |
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weight=label_weights, |
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avg_factor=avg_factor) |
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return loss_cls, loss_bbox, loss_dfl, loss_ld, weight_targets.sum() |
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def loss(self, x: List[Tensor], out_teacher: Tuple[Tensor], |
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batch_data_samples: SampleList) -> dict: |
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""" |
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Args: |
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x (list[Tensor]): Features from FPN. |
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out_teacher (tuple[Tensor]): The output of teacher. |
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batch_data_samples (list[:obj:`DetDataSample`]): The batch |
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data samples. It usually includes information such |
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as `gt_instance` or `gt_panoptic_seg` or `gt_sem_seg`. |
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Returns: |
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tuple[dict, list]: The loss components and proposals of each image. |
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- losses (dict[str, Tensor]): A dictionary of loss components. |
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- proposal_list (list[Tensor]): Proposals of each image. |
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""" |
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outputs = unpack_gt_instances(batch_data_samples) |
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batch_gt_instances, batch_gt_instances_ignore, batch_img_metas \ |
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= outputs |
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outs = self(x) |
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soft_targets = out_teacher[1] |
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loss_inputs = outs + (batch_gt_instances, batch_img_metas, |
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soft_targets) |
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losses = self.loss_by_feat( |
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*loss_inputs, batch_gt_instances_ignore=batch_gt_instances_ignore) |
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return losses |
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def loss_by_feat( |
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self, |
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cls_scores: List[Tensor], |
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bbox_preds: List[Tensor], |
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batch_gt_instances: InstanceList, |
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batch_img_metas: List[dict], |
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soft_targets: List[Tensor], |
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batch_gt_instances_ignore: OptInstanceList = None) -> dict: |
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"""Compute losses of the head. |
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Args: |
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cls_scores (list[Tensor]): Cls and quality scores for each scale |
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level has shape (N, num_classes, H, W). |
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bbox_preds (list[Tensor]): Box distribution logits for each scale |
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level with shape (N, 4*(n+1), H, W), n is max value of integral |
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set. |
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batch_gt_instances (list[:obj:`InstanceData`]): Batch of |
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gt_instance. It usually includes ``bboxes`` and ``labels`` |
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attributes. |
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soft_targets (list[Tensor]): Soft BBox regression targets. |
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batch_img_metas (list[dict]): Meta information of each image, e.g., |
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image size, scaling factor, etc. |
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batch_gt_instances_ignore (list[:obj:`InstanceData`], Optional): |
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Batch of gt_instances_ignore. It includes ``bboxes`` attribute |
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data that is ignored during training and testing. |
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Defaults to None. |
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Returns: |
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dict[str, Tensor]: A dictionary of loss components. |
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""" |
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featmap_sizes = [featmap.size()[-2:] for featmap in cls_scores] |
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assert len(featmap_sizes) == self.prior_generator.num_levels |
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device = cls_scores[0].device |
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anchor_list, valid_flag_list = self.get_anchors( |
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featmap_sizes, batch_img_metas, device=device) |
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cls_reg_targets = self.get_targets( |
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anchor_list, |
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valid_flag_list, |
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batch_gt_instances, |
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batch_img_metas, |
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batch_gt_instances_ignore=batch_gt_instances_ignore) |
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(anchor_list, labels_list, label_weights_list, bbox_targets_list, |
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bbox_weights_list, avg_factor) = cls_reg_targets |
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avg_factor = reduce_mean( |
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torch.tensor(avg_factor, dtype=torch.float, device=device)).item() |
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losses_cls, losses_bbox, losses_dfl, losses_ld, \ |
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avg_factor = multi_apply( |
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self.loss_by_feat_single, |
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anchor_list, |
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cls_scores, |
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bbox_preds, |
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labels_list, |
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label_weights_list, |
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bbox_targets_list, |
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self.prior_generator.strides, |
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soft_targets, |
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avg_factor=avg_factor) |
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avg_factor = sum(avg_factor) + 1e-6 |
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avg_factor = reduce_mean(avg_factor).item() |
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losses_bbox = [x / avg_factor for x in losses_bbox] |
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losses_dfl = [x / avg_factor for x in losses_dfl] |
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return dict( |
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loss_cls=losses_cls, |
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loss_bbox=losses_bbox, |
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loss_dfl=losses_dfl, |
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loss_ld=losses_ld) |
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