Mesh-Aware Epipolar Matching for Multi-View Multi-Person 3D Pose Estimation in Basketball 文章

ArXiv CS.CV2026-05-29NEWSen作者: Li Yin, Qin Haobin, Tomohiro Suzuki, Calvin Yeung, Mariko Isogawa, Keisuke Fujii

摘要

arXiv:2605.29953v1 Announce Type: new Abstract: Multi-view multi-person 3D pose estimation in team sports scenarios remains challenging due to player occlusions, appearance similarity caused by team uniforms, and the scarcity of annotated multi-view data, all of which limit the effectiveness and generalization capability of learning-based methods. In contrast, the performance of training-free approaches is inherently constrained by the accuracy of 2D keypoint detection and the robustness of cross-view association. To address these challenges, we propose Mesh-Aware Epipolar Matching (MAEM), a training-free framework for multi-view multi-person 3D pose estimation. Our method employs a monocular 3D human mesh recovery model as the frontend and introduces a two-stage epipolar matching strategy based on the recovered mesh outputs.

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