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arxiv:2504.19227

Unsupervised 2D-3D lifting of non-rigid objects using local constraints

Published on Apr 27
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Abstract

Unsupervised training of high-capacity models with localized low-rank constraints improves 3D shape prediction from 2D keypoints, reducing reconstruction error on the S-Up3D dataset by over 70%.

AI-generated summary

For non-rigid objects, predicting the 3D shape from 2D keypoint observations is ill-posed due to occlusions, and the need to disentangle changes in viewpoint and changes in shape. This challenge has often been addressed by embedding low-rank constraints into specialized models. These models can be hard to train, as they depend on finding a canonical way of aligning observations, before they can learn detailed geometry. These constraints have limited the reconstruction quality. We show that generic, high capacity models, trained with an unsupervised loss, allow for more accurate predicted shapes. In particular, applying low-rank constraints to localized subsets of the full shape allows the high capacity to be suitably constrained. We reduce the state-of-the-art reconstruction error on the S-Up3D dataset by over 70%.

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