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import logging |
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from typing import List, Optional, Sequence, Tuple |
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import torch |
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from detectron2.layers.nms import batched_nms |
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from detectron2.structures.instances import Instances |
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from densepose.converters import ToChartResultConverterWithConfidences |
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from densepose.structures import ( |
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DensePoseChartResultWithConfidences, |
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DensePoseEmbeddingPredictorOutput, |
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) |
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from densepose.vis.bounding_box import BoundingBoxVisualizer, ScoredBoundingBoxVisualizer |
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from densepose.vis.densepose_outputs_vertex import DensePoseOutputsVertexVisualizer |
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from densepose.vis.densepose_results import DensePoseResultsVisualizer |
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from .base import CompoundVisualizer |
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Scores = Sequence[float] |
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DensePoseChartResultsWithConfidences = List[DensePoseChartResultWithConfidences] |
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def extract_scores_from_instances(instances: Instances, select=None): |
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if instances.has("scores"): |
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return instances.scores if select is None else instances.scores[select] |
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return None |
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def extract_boxes_xywh_from_instances(instances: Instances, select=None): |
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if instances.has("pred_boxes"): |
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boxes_xywh = instances.pred_boxes.tensor.clone() |
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boxes_xywh[:, 2] -= boxes_xywh[:, 0] |
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boxes_xywh[:, 3] -= boxes_xywh[:, 1] |
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return boxes_xywh if select is None else boxes_xywh[select] |
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return None |
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def create_extractor(visualizer: object): |
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""" |
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Create an extractor for the provided visualizer |
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""" |
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if isinstance(visualizer, CompoundVisualizer): |
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extractors = [create_extractor(v) for v in visualizer.visualizers] |
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return CompoundExtractor(extractors) |
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elif isinstance(visualizer, DensePoseResultsVisualizer): |
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return DensePoseResultExtractor() |
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elif isinstance(visualizer, ScoredBoundingBoxVisualizer): |
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return CompoundExtractor([extract_boxes_xywh_from_instances, extract_scores_from_instances]) |
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elif isinstance(visualizer, BoundingBoxVisualizer): |
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return extract_boxes_xywh_from_instances |
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elif isinstance(visualizer, DensePoseOutputsVertexVisualizer): |
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return DensePoseOutputsExtractor() |
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else: |
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logger = logging.getLogger(__name__) |
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logger.error(f"Could not create extractor for {visualizer}") |
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return None |
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class BoundingBoxExtractor: |
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""" |
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Extracts bounding boxes from instances |
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""" |
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def __call__(self, instances: Instances): |
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boxes_xywh = extract_boxes_xywh_from_instances(instances) |
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return boxes_xywh |
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class ScoredBoundingBoxExtractor: |
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""" |
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Extracts bounding boxes from instances |
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""" |
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def __call__(self, instances: Instances, select=None): |
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scores = extract_scores_from_instances(instances) |
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boxes_xywh = extract_boxes_xywh_from_instances(instances) |
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if (scores is None) or (boxes_xywh is None): |
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return (boxes_xywh, scores) |
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if select is not None: |
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scores = scores[select] |
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boxes_xywh = boxes_xywh[select] |
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return (boxes_xywh, scores) |
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class DensePoseResultExtractor: |
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""" |
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Extracts DensePose chart result with confidences from instances |
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""" |
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def __call__( |
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self, instances: Instances, select=None |
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) -> Tuple[Optional[DensePoseChartResultsWithConfidences], Optional[torch.Tensor]]: |
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if instances.has("pred_densepose") and instances.has("pred_boxes"): |
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dpout = instances.pred_densepose |
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boxes_xyxy = instances.pred_boxes |
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boxes_xywh = extract_boxes_xywh_from_instances(instances) |
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if select is not None: |
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dpout = dpout[select] |
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boxes_xyxy = boxes_xyxy[select] |
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converter = ToChartResultConverterWithConfidences() |
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results = [converter.convert(dpout[i], boxes_xyxy[[i]]) for i in range(len(dpout))] |
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return results, boxes_xywh |
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else: |
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return None, None |
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class DensePoseOutputsExtractor: |
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""" |
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Extracts DensePose result from instances |
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""" |
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def __call__( |
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self, |
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instances: Instances, |
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select=None, |
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) -> Tuple[ |
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Optional[DensePoseEmbeddingPredictorOutput], Optional[torch.Tensor], Optional[List[int]] |
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]: |
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if not (instances.has("pred_densepose") and instances.has("pred_boxes")): |
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return None, None, None |
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dpout = instances.pred_densepose |
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boxes_xyxy = instances.pred_boxes |
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boxes_xywh = extract_boxes_xywh_from_instances(instances) |
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if instances.has("pred_classes"): |
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classes = instances.pred_classes.tolist() |
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else: |
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classes = None |
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if select is not None: |
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dpout = dpout[select] |
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boxes_xyxy = boxes_xyxy[select] |
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if classes is not None: |
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classes = classes[select] |
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return dpout, boxes_xywh, classes |
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class CompoundExtractor: |
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""" |
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Extracts data for CompoundVisualizer |
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""" |
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def __init__(self, extractors): |
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self.extractors = extractors |
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def __call__(self, instances: Instances, select=None): |
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datas = [] |
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for extractor in self.extractors: |
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data = extractor(instances, select) |
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datas.append(data) |
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return datas |
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class NmsFilteredExtractor: |
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""" |
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Extracts data in the format accepted by NmsFilteredVisualizer |
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""" |
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def __init__(self, extractor, iou_threshold): |
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self.extractor = extractor |
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self.iou_threshold = iou_threshold |
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def __call__(self, instances: Instances, select=None): |
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scores = extract_scores_from_instances(instances) |
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boxes_xywh = extract_boxes_xywh_from_instances(instances) |
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if boxes_xywh is None: |
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return None |
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select_local_idx = batched_nms( |
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boxes_xywh, |
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scores, |
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torch.zeros(len(scores), dtype=torch.int32), |
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iou_threshold=self.iou_threshold, |
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).squeeze() |
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select_local = torch.zeros(len(boxes_xywh), dtype=torch.bool, device=boxes_xywh.device) |
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select_local[select_local_idx] = True |
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select = select_local if select is None else (select & select_local) |
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return self.extractor(instances, select=select) |
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class ScoreThresholdedExtractor: |
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""" |
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Extracts data in the format accepted by ScoreThresholdedVisualizer |
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""" |
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def __init__(self, extractor, min_score): |
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self.extractor = extractor |
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self.min_score = min_score |
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def __call__(self, instances: Instances, select=None): |
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scores = extract_scores_from_instances(instances) |
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if scores is None: |
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return None |
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select_local = scores > self.min_score |
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select = select_local if select is None else (select & select_local) |
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data = self.extractor(instances, select=select) |
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return data |
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