AI RESEARCH
GLASS: Graph and Vision-Language Assisted Semantic Shape Correspondence
arXiv CS.CV
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ArXi:2603.07652v1 Announce Type: new Establishing dense correspondence across 3D shapes is crucial for fundamental downstream tasks, including texture transfer, shape interpolation, and robotic manipulation. However, learning these mappings without manual supervision remains a formidable challenge, particularly under severe non-isometric deformations and in inter-class settings where geometric cues are ambiguous. Conventional functional map methods, while elegant, typically struggle in these regimes due to their reliance on isometry.