| |
|
|
| from abc import ABC, abstractmethod |
| from dataclasses import dataclass |
| from typing import Any, Dict, List, Optional, Tuple |
| import torch |
| from torch.nn import functional as F |
|
|
| from detectron2.structures import BoxMode, Instances |
|
|
| from densepose import DensePoseDataRelative |
|
|
| LossDict = Dict[str, torch.Tensor] |
|
|
|
|
| def _linear_interpolation_utilities(v_norm, v0_src, size_src, v0_dst, size_dst, size_z): |
| """ |
| Computes utility values for linear interpolation at points v. |
| The points are given as normalized offsets in the source interval |
| (v0_src, v0_src + size_src), more precisely: |
| v = v0_src + v_norm * size_src / 256.0 |
| The computed utilities include lower points v_lo, upper points v_hi, |
| interpolation weights v_w and flags j_valid indicating whether the |
| points falls into the destination interval (v0_dst, v0_dst + size_dst). |
| |
| Args: |
| v_norm (:obj: `torch.Tensor`): tensor of size N containing |
| normalized point offsets |
| v0_src (:obj: `torch.Tensor`): tensor of size N containing |
| left bounds of source intervals for normalized points |
| size_src (:obj: `torch.Tensor`): tensor of size N containing |
| source interval sizes for normalized points |
| v0_dst (:obj: `torch.Tensor`): tensor of size N containing |
| left bounds of destination intervals |
| size_dst (:obj: `torch.Tensor`): tensor of size N containing |
| destination interval sizes |
| size_z (int): interval size for data to be interpolated |
| |
| Returns: |
| v_lo (:obj: `torch.Tensor`): int tensor of size N containing |
| indices of lower values used for interpolation, all values are |
| integers from [0, size_z - 1] |
| v_hi (:obj: `torch.Tensor`): int tensor of size N containing |
| indices of upper values used for interpolation, all values are |
| integers from [0, size_z - 1] |
| v_w (:obj: `torch.Tensor`): float tensor of size N containing |
| interpolation weights |
| j_valid (:obj: `torch.Tensor`): uint8 tensor of size N containing |
| 0 for points outside the estimation interval |
| (v0_est, v0_est + size_est) and 1 otherwise |
| """ |
| v = v0_src + v_norm * size_src / 256.0 |
| j_valid = (v - v0_dst >= 0) * (v - v0_dst < size_dst) |
| v_grid = (v - v0_dst) * size_z / size_dst |
| v_lo = v_grid.floor().long().clamp(min=0, max=size_z - 1) |
| v_hi = (v_lo + 1).clamp(max=size_z - 1) |
| v_grid = torch.min(v_hi.float(), v_grid) |
| v_w = v_grid - v_lo.float() |
| return v_lo, v_hi, v_w, j_valid |
|
|
|
|
| class BilinearInterpolationHelper: |
| """ |
| Args: |
| packed_annotations: object that contains packed annotations |
| j_valid (:obj: `torch.Tensor`): uint8 tensor of size M containing |
| 0 for points to be discarded and 1 for points to be selected |
| y_lo (:obj: `torch.Tensor`): int tensor of indices of upper values |
| in z_est for each point |
| y_hi (:obj: `torch.Tensor`): int tensor of indices of lower values |
| in z_est for each point |
| x_lo (:obj: `torch.Tensor`): int tensor of indices of left values |
| in z_est for each point |
| x_hi (:obj: `torch.Tensor`): int tensor of indices of right values |
| in z_est for each point |
| w_ylo_xlo (:obj: `torch.Tensor`): float tensor of size M; |
| contains upper-left value weight for each point |
| w_ylo_xhi (:obj: `torch.Tensor`): float tensor of size M; |
| contains upper-right value weight for each point |
| w_yhi_xlo (:obj: `torch.Tensor`): float tensor of size M; |
| contains lower-left value weight for each point |
| w_yhi_xhi (:obj: `torch.Tensor`): float tensor of size M; |
| contains lower-right value weight for each point |
| """ |
|
|
| def __init__( |
| self, |
| packed_annotations: Any, |
| j_valid: torch.Tensor, |
| y_lo: torch.Tensor, |
| y_hi: torch.Tensor, |
| x_lo: torch.Tensor, |
| x_hi: torch.Tensor, |
| w_ylo_xlo: torch.Tensor, |
| w_ylo_xhi: torch.Tensor, |
| w_yhi_xlo: torch.Tensor, |
| w_yhi_xhi: torch.Tensor, |
| ): |
| for k, v in locals().items(): |
| if k != "self": |
| setattr(self, k, v) |
|
|
| @staticmethod |
| def from_matches( |
| packed_annotations: Any, densepose_outputs_size_hw: Tuple[int, int] |
| ) -> "BilinearInterpolationHelper": |
| """ |
| Args: |
| packed_annotations: annotations packed into tensors, the following |
| attributes are required: |
| - bbox_xywh_gt |
| - bbox_xywh_est |
| - x_gt |
| - y_gt |
| - point_bbox_with_dp_indices |
| - point_bbox_indices |
| densepose_outputs_size_hw (tuple [int, int]): resolution of |
| DensePose predictor outputs (H, W) |
| Return: |
| An instance of `BilinearInterpolationHelper` used to perform |
| interpolation for the given annotation points and output resolution |
| """ |
|
|
| zh, zw = densepose_outputs_size_hw |
| x0_gt, y0_gt, w_gt, h_gt = packed_annotations.bbox_xywh_gt[ |
| packed_annotations.point_bbox_with_dp_indices |
| ].unbind(dim=1) |
| x0_est, y0_est, w_est, h_est = packed_annotations.bbox_xywh_est[ |
| packed_annotations.point_bbox_with_dp_indices |
| ].unbind(dim=1) |
| x_lo, x_hi, x_w, jx_valid = _linear_interpolation_utilities( |
| packed_annotations.x_gt, x0_gt, w_gt, x0_est, w_est, zw |
| ) |
| y_lo, y_hi, y_w, jy_valid = _linear_interpolation_utilities( |
| packed_annotations.y_gt, y0_gt, h_gt, y0_est, h_est, zh |
| ) |
| j_valid = jx_valid * jy_valid |
|
|
| w_ylo_xlo = (1.0 - x_w) * (1.0 - y_w) |
| w_ylo_xhi = x_w * (1.0 - y_w) |
| w_yhi_xlo = (1.0 - x_w) * y_w |
| w_yhi_xhi = x_w * y_w |
|
|
| return BilinearInterpolationHelper( |
| packed_annotations, |
| j_valid, |
| y_lo, |
| y_hi, |
| x_lo, |
| x_hi, |
| w_ylo_xlo, |
| w_ylo_xhi, |
| |
| w_yhi_xlo, |
| w_yhi_xhi, |
| ) |
|
|
| def extract_at_points( |
| self, |
| z_est, |
| slice_fine_segm=None, |
| w_ylo_xlo=None, |
| w_ylo_xhi=None, |
| w_yhi_xlo=None, |
| w_yhi_xhi=None, |
| ): |
| """ |
| Extract ground truth values z_gt for valid point indices and estimated |
| values z_est using bilinear interpolation over top-left (y_lo, x_lo), |
| top-right (y_lo, x_hi), bottom-left (y_hi, x_lo) and bottom-right |
| (y_hi, x_hi) values in z_est with corresponding weights: |
| w_ylo_xlo, w_ylo_xhi, w_yhi_xlo and w_yhi_xhi. |
| Use slice_fine_segm to slice dim=1 in z_est |
| """ |
| slice_fine_segm = ( |
| self.packed_annotations.fine_segm_labels_gt |
| if slice_fine_segm is None |
| else slice_fine_segm |
| ) |
| w_ylo_xlo = self.w_ylo_xlo if w_ylo_xlo is None else w_ylo_xlo |
| w_ylo_xhi = self.w_ylo_xhi if w_ylo_xhi is None else w_ylo_xhi |
| w_yhi_xlo = self.w_yhi_xlo if w_yhi_xlo is None else w_yhi_xlo |
| w_yhi_xhi = self.w_yhi_xhi if w_yhi_xhi is None else w_yhi_xhi |
|
|
| index_bbox = self.packed_annotations.point_bbox_indices |
| z_est_sampled = ( |
| z_est[index_bbox, slice_fine_segm, self.y_lo, self.x_lo] * w_ylo_xlo |
| + z_est[index_bbox, slice_fine_segm, self.y_lo, self.x_hi] * w_ylo_xhi |
| + z_est[index_bbox, slice_fine_segm, self.y_hi, self.x_lo] * w_yhi_xlo |
| + z_est[index_bbox, slice_fine_segm, self.y_hi, self.x_hi] * w_yhi_xhi |
| ) |
| return z_est_sampled |
|
|
|
|
| def resample_data( |
| z, bbox_xywh_src, bbox_xywh_dst, wout, hout, mode: str = "nearest", padding_mode: str = "zeros" |
| ): |
| """ |
| Args: |
| z (:obj: `torch.Tensor`): tensor of size (N,C,H,W) with data to be |
| resampled |
| bbox_xywh_src (:obj: `torch.Tensor`): tensor of size (N,4) containing |
| source bounding boxes in format XYWH |
| bbox_xywh_dst (:obj: `torch.Tensor`): tensor of size (N,4) containing |
| destination bounding boxes in format XYWH |
| Return: |
| zresampled (:obj: `torch.Tensor`): tensor of size (N, C, Hout, Wout) |
| with resampled values of z, where D is the discretization size |
| """ |
| n = bbox_xywh_src.size(0) |
| assert n == bbox_xywh_dst.size(0), ( |
| "The number of " |
| "source ROIs for resampling ({}) should be equal to the number " |
| "of destination ROIs ({})".format(bbox_xywh_src.size(0), bbox_xywh_dst.size(0)) |
| ) |
| x0src, y0src, wsrc, hsrc = bbox_xywh_src.unbind(dim=1) |
| x0dst, y0dst, wdst, hdst = bbox_xywh_dst.unbind(dim=1) |
| x0dst_norm = 2 * (x0dst - x0src) / wsrc - 1 |
| y0dst_norm = 2 * (y0dst - y0src) / hsrc - 1 |
| x1dst_norm = 2 * (x0dst + wdst - x0src) / wsrc - 1 |
| y1dst_norm = 2 * (y0dst + hdst - y0src) / hsrc - 1 |
| grid_w = torch.arange(wout, device=z.device, dtype=torch.float) / wout |
| grid_h = torch.arange(hout, device=z.device, dtype=torch.float) / hout |
| grid_w_expanded = grid_w[None, None, :].expand(n, hout, wout) |
| grid_h_expanded = grid_h[None, :, None].expand(n, hout, wout) |
| dx_expanded = (x1dst_norm - x0dst_norm)[:, None, None].expand(n, hout, wout) |
| dy_expanded = (y1dst_norm - y0dst_norm)[:, None, None].expand(n, hout, wout) |
| x0_expanded = x0dst_norm[:, None, None].expand(n, hout, wout) |
| y0_expanded = y0dst_norm[:, None, None].expand(n, hout, wout) |
| grid_x = grid_w_expanded * dx_expanded + x0_expanded |
| grid_y = grid_h_expanded * dy_expanded + y0_expanded |
| grid = torch.stack((grid_x, grid_y), dim=3) |
| |
| zresampled = F.grid_sample(z, grid, mode=mode, padding_mode=padding_mode, align_corners=True) |
| return zresampled |
|
|
|
|
| class AnnotationsAccumulator(ABC): |
| """ |
| Abstract class for an accumulator for annotations that can produce |
| dense annotations packed into tensors. |
| """ |
|
|
| @abstractmethod |
| def accumulate(self, instances_one_image: Instances): |
| """ |
| Accumulate instances data for one image |
| |
| Args: |
| instances_one_image (Instances): instances data to accumulate |
| """ |
| pass |
|
|
| @abstractmethod |
| def pack(self) -> Any: |
| """ |
| Pack data into tensors |
| """ |
| pass |
|
|
|
|
| @dataclass |
| class PackedChartBasedAnnotations: |
| """ |
| Packed annotations for chart-based model training. The following attributes |
| are defined: |
| - fine_segm_labels_gt (tensor [K] of `int64`): GT fine segmentation point labels |
| - x_gt (tensor [K] of `float32`): GT normalized X point coordinates |
| - y_gt (tensor [K] of `float32`): GT normalized Y point coordinates |
| - u_gt (tensor [K] of `float32`): GT point U values |
| - v_gt (tensor [K] of `float32`): GT point V values |
| - coarse_segm_gt (tensor [N, S, S] of `float32`): GT segmentation for bounding boxes |
| - bbox_xywh_gt (tensor [N, 4] of `float32`): selected GT bounding boxes in |
| XYWH format |
| - bbox_xywh_est (tensor [N, 4] of `float32`): selected matching estimated |
| bounding boxes in XYWH format |
| - point_bbox_with_dp_indices (tensor [K] of `int64`): indices of bounding boxes |
| with DensePose annotations that correspond to the point data |
| - point_bbox_indices (tensor [K] of `int64`): indices of bounding boxes |
| (not necessarily the selected ones with DensePose data) that correspond |
| to the point data |
| - bbox_indices (tensor [N] of `int64`): global indices of selected bounding |
| boxes with DensePose annotations; these indices could be used to access |
| features that are computed for all bounding boxes, not only the ones with |
| DensePose annotations. |
| Here K is the total number of points and N is the total number of instances |
| with DensePose annotations. |
| """ |
|
|
| fine_segm_labels_gt: torch.Tensor |
| x_gt: torch.Tensor |
| y_gt: torch.Tensor |
| u_gt: torch.Tensor |
| v_gt: torch.Tensor |
| coarse_segm_gt: Optional[torch.Tensor] |
| bbox_xywh_gt: torch.Tensor |
| bbox_xywh_est: torch.Tensor |
| point_bbox_with_dp_indices: torch.Tensor |
| point_bbox_indices: torch.Tensor |
| bbox_indices: torch.Tensor |
|
|
|
|
| class ChartBasedAnnotationsAccumulator(AnnotationsAccumulator): |
| """ |
| Accumulates annotations by batches that correspond to objects detected on |
| individual images. Can pack them together into single tensors. |
| """ |
|
|
| def __init__(self): |
| self.i_gt = [] |
| self.x_gt = [] |
| self.y_gt = [] |
| self.u_gt = [] |
| self.v_gt = [] |
| self.s_gt = [] |
| self.bbox_xywh_gt = [] |
| self.bbox_xywh_est = [] |
| self.point_bbox_with_dp_indices = [] |
| self.point_bbox_indices = [] |
| self.bbox_indices = [] |
| self.nxt_bbox_with_dp_index = 0 |
| self.nxt_bbox_index = 0 |
|
|
| def accumulate(self, instances_one_image: Instances): |
| """ |
| Accumulate instances data for one image |
| |
| Args: |
| instances_one_image (Instances): instances data to accumulate |
| """ |
| boxes_xywh_est = BoxMode.convert( |
| instances_one_image.proposal_boxes.tensor.clone(), BoxMode.XYXY_ABS, BoxMode.XYWH_ABS |
| ) |
| boxes_xywh_gt = BoxMode.convert( |
| instances_one_image.gt_boxes.tensor.clone(), BoxMode.XYXY_ABS, BoxMode.XYWH_ABS |
| ) |
| n_matches = len(boxes_xywh_gt) |
| assert n_matches == len( |
| boxes_xywh_est |
| ), f"Got {len(boxes_xywh_est)} proposal boxes and {len(boxes_xywh_gt)} GT boxes" |
| if not n_matches: |
| |
| return |
| if ( |
| not hasattr(instances_one_image, "gt_densepose") |
| or instances_one_image.gt_densepose is None |
| ): |
| |
| self.nxt_bbox_index += n_matches |
| return |
| for box_xywh_est, box_xywh_gt, dp_gt in zip( |
| boxes_xywh_est, boxes_xywh_gt, instances_one_image.gt_densepose |
| ): |
| if (dp_gt is not None) and (len(dp_gt.x) > 0): |
| |
| |
| self._do_accumulate(box_xywh_gt, box_xywh_est, dp_gt) |
| self.nxt_bbox_index += 1 |
|
|
| def _do_accumulate( |
| self, box_xywh_gt: torch.Tensor, box_xywh_est: torch.Tensor, dp_gt: DensePoseDataRelative |
| ): |
| """ |
| Accumulate instances data for one image, given that the data is not empty |
| |
| Args: |
| box_xywh_gt (tensor): GT bounding box |
| box_xywh_est (tensor): estimated bounding box |
| dp_gt (DensePoseDataRelative): GT densepose data |
| """ |
| self.i_gt.append(dp_gt.i) |
| self.x_gt.append(dp_gt.x) |
| self.y_gt.append(dp_gt.y) |
| self.u_gt.append(dp_gt.u) |
| self.v_gt.append(dp_gt.v) |
| if hasattr(dp_gt, "segm"): |
| self.s_gt.append(dp_gt.segm.unsqueeze(0)) |
| self.bbox_xywh_gt.append(box_xywh_gt.view(-1, 4)) |
| self.bbox_xywh_est.append(box_xywh_est.view(-1, 4)) |
| self.point_bbox_with_dp_indices.append( |
| torch.full_like(dp_gt.i, self.nxt_bbox_with_dp_index) |
| ) |
| self.point_bbox_indices.append(torch.full_like(dp_gt.i, self.nxt_bbox_index)) |
| self.bbox_indices.append(self.nxt_bbox_index) |
| self.nxt_bbox_with_dp_index += 1 |
|
|
| def pack(self) -> Optional[PackedChartBasedAnnotations]: |
| """ |
| Pack data into tensors |
| """ |
| if not len(self.i_gt): |
| |
| |
| |
| |
| |
| return None |
| return PackedChartBasedAnnotations( |
| fine_segm_labels_gt=torch.cat(self.i_gt, 0).long(), |
| x_gt=torch.cat(self.x_gt, 0), |
| y_gt=torch.cat(self.y_gt, 0), |
| u_gt=torch.cat(self.u_gt, 0), |
| v_gt=torch.cat(self.v_gt, 0), |
| |
| coarse_segm_gt=torch.cat(self.s_gt, 0) |
| if len(self.s_gt) == len(self.bbox_xywh_gt) |
| else None, |
| bbox_xywh_gt=torch.cat(self.bbox_xywh_gt, 0), |
| bbox_xywh_est=torch.cat(self.bbox_xywh_est, 0), |
| point_bbox_with_dp_indices=torch.cat(self.point_bbox_with_dp_indices, 0).long(), |
| point_bbox_indices=torch.cat(self.point_bbox_indices, 0).long(), |
| bbox_indices=torch.as_tensor( |
| self.bbox_indices, dtype=torch.long, device=self.x_gt[0].device |
| ).long(), |
| ) |
|
|
|
|
| def extract_packed_annotations_from_matches( |
| proposals_with_targets: List[Instances], accumulator: AnnotationsAccumulator |
| ) -> Any: |
| for proposals_targets_per_image in proposals_with_targets: |
| accumulator.accumulate(proposals_targets_per_image) |
| return accumulator.pack() |
|
|
|
|
| def sample_random_indices( |
| n_indices: int, n_samples: int, device: Optional[torch.device] = None |
| ) -> Optional[torch.Tensor]: |
| """ |
| Samples `n_samples` random indices from range `[0..n_indices - 1]`. |
| If `n_indices` is smaller than `n_samples`, returns `None` meaning that all indices |
| are selected. |
| Args: |
| n_indices (int): total number of indices |
| n_samples (int): number of indices to sample |
| device (torch.device): the desired device of returned tensor |
| Return: |
| Tensor of selected vertex indices, or `None`, if all vertices are selected |
| """ |
| if (n_samples <= 0) or (n_indices <= n_samples): |
| return None |
| indices = torch.randperm(n_indices, device=device)[:n_samples] |
| return indices |
|
|