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from typing import Any, Dict, List, Tuple |
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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 BoxMode, Instances |
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from densepose.converters import ToChartResultConverter |
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from densepose.converters.base import IntTupleBox, make_int_box |
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from densepose.structures import DensePoseDataRelative, DensePoseList |
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class DensePoseBaseSampler: |
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""" |
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Base DensePose sampler to produce DensePose data from DensePose predictions. |
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Samples for each class are drawn according to some distribution over all pixels estimated |
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to belong to that class. |
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""" |
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def __init__(self, count_per_class: int = 8): |
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""" |
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Constructor |
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Args: |
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count_per_class (int): the sampler produces at most `count_per_class` |
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samples for each category |
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""" |
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self.count_per_class = count_per_class |
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def __call__(self, instances: Instances) -> DensePoseList: |
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""" |
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Convert DensePose predictions (an instance of `DensePoseChartPredictorOutput`) |
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into DensePose annotations data (an instance of `DensePoseList`) |
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""" |
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boxes_xyxy_abs = instances.pred_boxes.tensor.clone().cpu() |
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boxes_xywh_abs = BoxMode.convert(boxes_xyxy_abs, BoxMode.XYXY_ABS, BoxMode.XYWH_ABS) |
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dp_datas = [] |
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for i in range(len(boxes_xywh_abs)): |
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annotation_i = self._sample(instances[i], make_int_box(boxes_xywh_abs[i])) |
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annotation_i[DensePoseDataRelative.S_KEY] = self._resample_mask( |
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instances[i].pred_densepose |
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) |
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dp_datas.append(DensePoseDataRelative(annotation_i)) |
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dp_list = DensePoseList(dp_datas, boxes_xyxy_abs, instances.image_size) |
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return dp_list |
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def _sample(self, instance: Instances, bbox_xywh: IntTupleBox) -> Dict[str, List[Any]]: |
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""" |
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Sample DensPoseDataRelative from estimation results |
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""" |
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labels, dp_result = self._produce_labels_and_results(instance) |
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annotation = { |
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DensePoseDataRelative.X_KEY: [], |
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DensePoseDataRelative.Y_KEY: [], |
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DensePoseDataRelative.U_KEY: [], |
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DensePoseDataRelative.V_KEY: [], |
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DensePoseDataRelative.I_KEY: [], |
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} |
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n, h, w = dp_result.shape |
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for part_id in range(1, DensePoseDataRelative.N_PART_LABELS + 1): |
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indices = torch.nonzero(labels.expand(n, h, w) == part_id, as_tuple=True) |
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values = dp_result[indices].view(n, -1) |
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k = values.shape[1] |
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count = min(self.count_per_class, k) |
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if count <= 0: |
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continue |
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index_sample = self._produce_index_sample(values, count) |
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sampled_values = values[:, index_sample] |
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sampled_y = indices[1][index_sample] + 0.5 |
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sampled_x = indices[2][index_sample] + 0.5 |
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x = (sampled_x / w * 256.0).cpu().tolist() |
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y = (sampled_y / h * 256.0).cpu().tolist() |
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u = sampled_values[0].clamp(0, 1).cpu().tolist() |
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v = sampled_values[1].clamp(0, 1).cpu().tolist() |
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fine_segm_labels = [part_id] * count |
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annotation[DensePoseDataRelative.X_KEY].extend(x) |
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annotation[DensePoseDataRelative.Y_KEY].extend(y) |
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annotation[DensePoseDataRelative.U_KEY].extend(u) |
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annotation[DensePoseDataRelative.V_KEY].extend(v) |
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annotation[DensePoseDataRelative.I_KEY].extend(fine_segm_labels) |
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return annotation |
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def _produce_index_sample(self, values: torch.Tensor, count: int): |
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""" |
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Abstract method to produce a sample of indices to select data |
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To be implemented in descendants |
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Args: |
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values (torch.Tensor): an array of size [n, k] that contains |
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estimated values (U, V, confidences); |
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n: number of channels (U, V, confidences) |
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k: number of points labeled with part_id |
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count (int): number of samples to produce, should be positive and <= k |
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Return: |
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list(int): indices of values (along axis 1) selected as a sample |
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""" |
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raise NotImplementedError |
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def _produce_labels_and_results(self, instance: Instances) -> Tuple[torch.Tensor, torch.Tensor]: |
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""" |
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Method to get labels and DensePose results from an instance |
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Args: |
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instance (Instances): an instance of `DensePoseChartPredictorOutput` |
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Return: |
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labels (torch.Tensor): shape [H, W], DensePose segmentation labels |
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dp_result (torch.Tensor): shape [2, H, W], stacked DensePose results u and v |
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""" |
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converter = ToChartResultConverter |
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chart_result = converter.convert(instance.pred_densepose, instance.pred_boxes) |
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labels, dp_result = chart_result.labels.cpu(), chart_result.uv.cpu() |
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return labels, dp_result |
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def _resample_mask(self, output: Any) -> torch.Tensor: |
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""" |
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Convert DensePose predictor output to segmentation annotation - tensors of size |
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(256, 256) and type `int64`. |
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Args: |
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output: DensePose predictor output with the following attributes: |
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- coarse_segm: tensor of size [N, D, H, W] with unnormalized coarse |
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segmentation scores |
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- fine_segm: tensor of size [N, C, H, W] with unnormalized fine |
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segmentation scores |
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Return: |
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Tensor of size (S, S) and type `int64` with coarse segmentation annotations, |
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where S = DensePoseDataRelative.MASK_SIZE |
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""" |
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sz = DensePoseDataRelative.MASK_SIZE |
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S = ( |
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F.interpolate(output.coarse_segm, (sz, sz), mode="bilinear", align_corners=False) |
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.argmax(dim=1) |
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.long() |
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) |
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I = ( |
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( |
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F.interpolate( |
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output.fine_segm, |
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(sz, sz), |
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mode="bilinear", |
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align_corners=False, |
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).argmax(dim=1) |
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* (S > 0).long() |
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) |
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.squeeze() |
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.cpu() |
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) |
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FINE_TO_COARSE_SEGMENTATION = { |
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1: 1, |
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2: 1, |
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3: 2, |
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4: 3, |
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5: 4, |
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6: 5, |
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7: 6, |
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8: 7, |
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9: 6, |
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10: 7, |
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11: 8, |
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12: 9, |
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13: 8, |
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14: 9, |
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15: 10, |
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16: 11, |
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17: 10, |
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18: 11, |
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19: 12, |
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20: 13, |
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21: 12, |
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22: 13, |
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23: 14, |
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24: 14, |
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} |
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mask = torch.zeros((sz, sz), dtype=torch.int64, device=torch.device("cpu")) |
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for i in range(DensePoseDataRelative.N_PART_LABELS): |
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mask[I == i + 1] = FINE_TO_COARSE_SEGMENTATION[i + 1] |
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return mask |
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