AI RESEARCH
Learning Convex Decomposition via Feature Fields
arXiv CS.CV
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ArXi:2603.09285v1 Announce Type: new This work proposes a new formulation to the long-standing problem of convex decomposition through learning feature fields, enabling the first feed-forward model for open-world convex decomposition. Our method produces high-quality decompositions of 3D shapes into a union of convex bodies, which are essential to accelerate collision detection in physical simulation, amongst many other applications.