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Papers/Detection, Pose Estimation and Segmentation for Multiple B...

Detection, Pose Estimation and Segmentation for Multiple Bodies: Closing the Virtuous Circle

Miroslav Purkrabek, Jiri Matas

2024-12-02arXiv 2024 12Human Instance SegmentationSegmentationPose EstimationPose-Based Human Instance Segmentation
PaperPDFCode(official)

Abstract

Human pose estimation methods work well on separated people but struggle with multi-body scenarios. Recent work has addressed this problem by conditioning pose estimation with detected bounding boxes or bottom-up-estimated poses. Unfortunately, all of these approaches overlooked segmentation masks and their connection to estimated keypoints. We condition pose estimation model by segmentation masks instead of bounding boxes to improve instance separation. This improves top-down pose estimation in multi-body scenarios but does not fix detection errors. Consequently, we develop BBox-Mask-Pose (BMP), integrating detection, segmentation and pose estimation into self-improving feedback loop. We adapt detector and pose estimation model for conditioning by instance masks and use Segment Anything as pose-to-mask model to close the circle. With only small models, BMP is superior to top-down methods on OCHuman dataset and to detector-free methods on COCO dataset, combining the best from both approaches and matching state of art performance in both settings. Code is available on https://mirapurkrabek.github.io/BBox-Mask-Pose.

Results

TaskDatasetMetricValueModel
Pose EstimationOCHumanTest AP48.3BBox-Mask-Pose 2x
Pose EstimationOCHumanValidation AP48.6BBox-Mask-Pose 2x
Pose EstimationOCHumanTest AP45MaskPose-b
Pose EstimationOCHumanValidation AP45.3MaskPose-b
Pose EstimationOCHumanTest AP48.3BBox-Mask-Pose 2x
Pose EstimationOCHumanValidation AP48.6BBox-Mask-Pose 2x
3DOCHumanTest AP48.3BBox-Mask-Pose 2x
3DOCHumanValidation AP48.6BBox-Mask-Pose 2x
3DOCHumanTest AP45MaskPose-b
3DOCHumanValidation AP45.3MaskPose-b
3DOCHumanTest AP48.3BBox-Mask-Pose 2x
3DOCHumanValidation AP48.6BBox-Mask-Pose 2x
Instance SegmentationOCHumanAP32.4BBox-Mask-Pose 2x
Instance SegmentationOCHumanAP26.5RTMDet-ins-l
2D Human Pose EstimationOCHumanTest AP48.3BBox-Mask-Pose 2x
2D Human Pose EstimationOCHumanValidation AP48.6BBox-Mask-Pose 2x
1 Image, 2*2 StitchiOCHumanTest AP48.3BBox-Mask-Pose 2x
1 Image, 2*2 StitchiOCHumanValidation AP48.6BBox-Mask-Pose 2x
1 Image, 2*2 StitchiOCHumanTest AP45MaskPose-b
1 Image, 2*2 StitchiOCHumanValidation AP45.3MaskPose-b
1 Image, 2*2 StitchiOCHumanTest AP48.3BBox-Mask-Pose 2x
1 Image, 2*2 StitchiOCHumanValidation AP48.6BBox-Mask-Pose 2x
Human Instance SegmentationOCHumanAP32.4BBox-Mask-Pose 2x
Human Instance SegmentationOCHumanAP26.5RTMDet-ins-l

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