AI RESEARCH

CanoVerse: 3D Object Scalable Canonicalization and Dataset for Generation and Pose

arXiv CS.CV

ArXi:2603.07144v1 Announce Type: new 3D learning systems implicitly assume that objects occupy a coherent reference frame. Nonetheless, in practice, every asset arrives with an arbitrary global rotation, and models are left to resolve directional ambiguity on their own. This persistent misalignment suppresses pose-consistent generation, and blocks the emergence of stable directional semantics. To address this issue, we construct \methodName{}, a massive canonical 3D dataset of 320K objects over 1,156 categories -- an order-of-magnitude increase over prior work.