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Auteurs principaux: Moriki, Takato, Taketsugu, Hiromu, Ukita, Norimichi
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2603.10398
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author Moriki, Takato
Taketsugu, Hiromu
Ukita, Norimichi
author_facet Moriki, Takato
Taketsugu, Hiromu
Ukita, Norimichi
contents In Multi-Person Pose Estimation, many metrics place importance on ranking of pose detection confidence scores. Current metrics tend to disregard false-positive poses with low confidence, focusing primarily on a larger number of high-confidence poses. Consequently, these metrics may yield high scores even when many false-positive poses with low confidence are detected. For fair evaluation taking into account a tradeoff between true-positive and false-positive poses, this paper proposes Optimal Correction Cost for pose (OCpose), which evaluates detected poses against pose annotations as an optimal transportation. For the fair tradeoff between true-positive and false-positive poses, OCpose equally evaluates all the detected poses regardless of their confidence scores. In OCpose, on the other hand, the confidence score of each pose is utilized to improve the reliability of matching scores between the estimated pose and pose annotations. As a result, OCpose provides a different perspective assessment than other confidence ranking-based metrics.
format Preprint
id arxiv_https___arxiv_org_abs_2603_10398
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Multi-Person Pose Estimation Evaluation Using Optimal Transportation and Improved Pose Matching
Moriki, Takato
Taketsugu, Hiromu
Ukita, Norimichi
Computer Vision and Pattern Recognition
In Multi-Person Pose Estimation, many metrics place importance on ranking of pose detection confidence scores. Current metrics tend to disregard false-positive poses with low confidence, focusing primarily on a larger number of high-confidence poses. Consequently, these metrics may yield high scores even when many false-positive poses with low confidence are detected. For fair evaluation taking into account a tradeoff between true-positive and false-positive poses, this paper proposes Optimal Correction Cost for pose (OCpose), which evaluates detected poses against pose annotations as an optimal transportation. For the fair tradeoff between true-positive and false-positive poses, OCpose equally evaluates all the detected poses regardless of their confidence scores. In OCpose, on the other hand, the confidence score of each pose is utilized to improve the reliability of matching scores between the estimated pose and pose annotations. As a result, OCpose provides a different perspective assessment than other confidence ranking-based metrics.
title Multi-Person Pose Estimation Evaluation Using Optimal Transportation and Improved Pose Matching
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.10398