AI RESEARCH
sim2art: Accurate Articulated Object Modeling from a Single Video using Synthetic Training Data Only
arXiv CS.CV
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ArXi:2512.07698v2 Announce Type: replace Understanding articulated objects from monocular video is a crucial yet challenging task in robotics and digital twin creation. Existing methods often rely on complex multi-view setups, high-fidelity object scans, or fragile long-term point tracks that frequently fail in casual real-world captures. In this paper, we present sim2art, a data-driven framework that recovers the 3D part segmentation and joint parameters of articulated objects from a single monocular video captured by a freely moving camera.