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Compositionally Generalizable 3D Structure Prediction

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arxiv 2012.02493 v3 pith:ZM7D6E6K submitted 2020-12-04 cs.CV

Compositionally Generalizable 3D Structure Prediction

classification cs.CV
keywords objectshapecategoriespartsproblemdifferentgeneralizabilitygeneralize
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Single-image 3D shape reconstruction is an important and long-standing problem in computer vision. A plethora of existing works is constantly pushing the state-of-the-art performance in the deep learning era. However, there remains a much more difficult and under-explored issue on how to generalize the learned skills over unseen object categories that have very different shape geometry distributions. In this paper, we bring in the concept of compositional generalizability and propose a novel framework that could better generalize to these unseen categories. We factorize the 3D shape reconstruction problem into proper sub-problems, each of which is tackled by a carefully designed neural sub-module with generalizability concerns. The intuition behind our formulation is that object parts (slates and cylindrical parts), their relationships (adjacency and translation symmetry), and shape substructures (T-junctions and a symmetric group of parts) are mostly shared across object categories, even though object geometries may look very different (e.g. chairs and cabinets). Experiments on PartNet show that we achieve superior performance than state-of-the-art. This validates our problem factorization and network designs.

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