Multi-Person Pose Estimation Evaluation Using Optimal Transportation and Improved Pose Matching
arXiv cs.CV / 3/12/2026
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Key Points
- The paper critiques current pose estimation evaluation metrics for over-emphasizing high-confidence poses while ignoring low-confidence false positives.
- It proposes OCpose, a novel evaluation metric based on optimal transport to compare detected poses with annotations, aiming for a fair tradeoff between true positives and false positives.
- OCpose leverages pose confidence scores to improve the reliability of matching between estimated poses and annotations while treating detected poses more equitably.
- The approach offers a different perspective on model ranking and could influence how multi-person pose estimation systems are benchmarked and compared.
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