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from dataclasses import dataclass |
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from typing import Any, Iterable, List, Optional |
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import torch |
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from torch.nn import functional as F |
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from detectron2.structures import Instances |
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@dataclass |
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class DataForMaskLoss: |
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""" |
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Contains mask GT and estimated data for proposals from multiple images: |
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""" |
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masks_gt: Optional[torch.Tensor] = None |
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masks_est: Optional[torch.Tensor] = None |
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def extract_data_for_mask_loss_from_matches( |
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proposals_targets: Iterable[Instances], estimated_segm: torch.Tensor |
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) -> DataForMaskLoss: |
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""" |
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Extract data for mask loss from instances that contain matched GT and |
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estimated bounding boxes. |
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Args: |
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proposals_targets: Iterable[Instances] |
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matched GT and estimated results, each item in the iterable |
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corresponds to data in 1 image |
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estimated_segm: tensor(K, C, S, S) of float - raw unnormalized |
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segmentation scores, here S is the size to which GT masks are |
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to be resized |
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Return: |
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masks_est: tensor(K, C, S, S) of float - class scores |
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masks_gt: tensor(K, S, S) of int64 - labels |
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""" |
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data = DataForMaskLoss() |
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masks_gt = [] |
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offset = 0 |
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assert estimated_segm.shape[2] == estimated_segm.shape[3], ( |
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f"Expected estimated segmentation to have a square shape, " |
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f"but the actual shape is {estimated_segm.shape[2:]}" |
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) |
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mask_size = estimated_segm.shape[2] |
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num_proposals = sum(inst.proposal_boxes.tensor.size(0) for inst in proposals_targets) |
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num_estimated = estimated_segm.shape[0] |
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assert ( |
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num_proposals == num_estimated |
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), "The number of proposals {} must be equal to the number of estimates {}".format( |
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num_proposals, num_estimated |
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) |
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for proposals_targets_per_image in proposals_targets: |
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n_i = proposals_targets_per_image.proposal_boxes.tensor.size(0) |
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if not n_i: |
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continue |
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gt_masks_per_image = proposals_targets_per_image.gt_masks.crop_and_resize( |
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proposals_targets_per_image.proposal_boxes.tensor, mask_size |
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).to(device=estimated_segm.device) |
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masks_gt.append(gt_masks_per_image) |
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offset += n_i |
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if masks_gt: |
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data.masks_est = estimated_segm |
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data.masks_gt = torch.cat(masks_gt, dim=0) |
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return data |
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class MaskLoss: |
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""" |
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Mask loss as cross-entropy for raw unnormalized scores given ground truth labels. |
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Mask ground truth labels are defined for the whole image and not only the |
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bounding box of interest. They are stored as objects that are assumed to implement |
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the `crop_and_resize` interface (e.g. BitMasks, PolygonMasks). |
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""" |
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def __call__( |
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self, proposals_with_gt: List[Instances], densepose_predictor_outputs: Any |
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) -> torch.Tensor: |
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""" |
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Computes segmentation loss as cross-entropy for raw unnormalized |
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scores given ground truth labels. |
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Args: |
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proposals_with_gt (list of Instances): detections with associated ground truth data |
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densepose_predictor_outputs: an object of a dataclass that contains predictor outputs |
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with estimated values; assumed to have the following attribute: |
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* coarse_segm (tensor of shape [N, D, S, S]): coarse segmentation estimates |
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as raw unnormalized scores |
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where N is the number of detections, S is the estimate size ( = width = height) |
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and D is the number of coarse segmentation channels. |
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Return: |
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Cross entropy for raw unnormalized scores for coarse segmentation given |
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ground truth labels from masks |
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""" |
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if not len(proposals_with_gt): |
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return self.fake_value(densepose_predictor_outputs) |
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with torch.no_grad(): |
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mask_loss_data = extract_data_for_mask_loss_from_matches( |
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proposals_with_gt, densepose_predictor_outputs.coarse_segm |
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) |
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if (mask_loss_data.masks_gt is None) or (mask_loss_data.masks_est is None): |
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return self.fake_value(densepose_predictor_outputs) |
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return F.cross_entropy(mask_loss_data.masks_est, mask_loss_data.masks_gt.long()) |
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def fake_value(self, densepose_predictor_outputs: Any) -> torch.Tensor: |
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""" |
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Fake segmentation loss used when no suitable ground truth data |
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was found in a batch. The loss has a value 0 and is primarily used to |
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construct the computation graph, so that `DistributedDataParallel` |
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has similar graphs on all GPUs and can perform reduction properly. |
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Args: |
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densepose_predictor_outputs: DensePose predictor outputs, an object |
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of a dataclass that is assumed to have `coarse_segm` |
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attribute |
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Return: |
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Zero value loss with proper computation graph |
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""" |
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return densepose_predictor_outputs.coarse_segm.sum() * 0 |
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