CVAIAug 18, 2025

OpenMoCap: Rethinking Optical Motion Capture under Real-world Occlusion

arXiv:2508.12610v12 citationsh-index: 3Has CodeMM
Originality Incremental advance
AI Analysis

This work addresses a critical limitation in motion capture for applications like virtual reality and film production, though it appears incremental by focusing on specific occlusion challenges.

The paper tackled the problem of optical motion capture performance degradation under real-world marker occlusions by introducing the CMU-Occlu dataset with realistic occlusion patterns and proposing OpenMoCap, a model that outperformed competing methods in diverse scenarios.

Optical motion capture is a foundational technology driving advancements in cutting-edge fields such as virtual reality and film production. However, system performance suffers severely under large-scale marker occlusions common in real-world applications. An in-depth analysis identifies two primary limitations of current models: (i) the lack of training datasets accurately reflecting realistic marker occlusion patterns, and (ii) the absence of training strategies designed to capture long-range dependencies among markers. To tackle these challenges, we introduce the CMU-Occlu dataset, which incorporates ray tracing techniques to realistically simulate practical marker occlusion patterns. Furthermore, we propose OpenMoCap, a novel motion-solving model designed specifically for robust motion capture in environments with significant occlusions. Leveraging a marker-joint chain inference mechanism, OpenMoCap enables simultaneous optimization and construction of deep constraints between markers and joints. Extensive comparative experiments demonstrate that OpenMoCap consistently outperforms competing methods across diverse scenarios, while the CMU-Occlu dataset opens the door for future studies in robust motion solving. The proposed OpenMoCap is integrated into the MoSen MoCap system for practical deployment. The code is released at: https://github.com/qianchen214/OpenMoCap.

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