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Self-Supervised Category-Level Articulated Object Pose Estimation with Part-Level SE(3) Equivariance

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arxiv 2302.14268 v1 pith:7SQ57ETV submitted 2023-02-28 cs.CV

Self-Supervised Category-Level Articulated Object Pose Estimation with Part-Level SE(3) Equivariance

classification cs.CV
keywords articulatedobjectcanonicalestimationpart-levelposeposescategory-level
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Category-level articulated object pose estimation aims to estimate a hierarchy of articulation-aware object poses of an unseen articulated object from a known category. To reduce the heavy annotations needed for supervised learning methods, we present a novel self-supervised strategy that solves this problem without any human labels. Our key idea is to factorize canonical shapes and articulated object poses from input articulated shapes through part-level equivariant shape analysis. Specifically, we first introduce the concept of part-level SE(3) equivariance and devise a network to learn features of such property. Then, through a carefully designed fine-grained pose-shape disentanglement strategy, we expect that canonical spaces to support pose estimation could be induced automatically. Thus, we could further predict articulated object poses as per-part rigid transformations describing how parts transform from their canonical part spaces to the camera space. Extensive experiments demonstrate the effectiveness of our method on both complete and partial point clouds from synthetic and real articulated object datasets.

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