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DiLO: Disentangled Latent Optimization for Learning Shape and Deformation in Grouped Deforming 3D Objects

Uddin, Mostofa Rafid
Armouti, Jana
Sain, Umong
Rahman, Md Asib
Li, Xingjian
Xu, Min
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Computer Vision
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Conference proceeding
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Abstract
In this work, we propose a disentangled latent optimization-based method for parameterizing grouped deforming 3D objects into shape and deformation factors in an unsupervised manner. Our approach involves the joint optimization of a generator network along with the shape and deformation factors, supported by specific regularization techniques. For efficient amortized inference of disentangled shape and deformation codes, we train two order-invariant PointNet-based encoder networks in the second stage of our method. We demonstrate several significant downstream applications of our method, including unsupervised deformation transfer, deformation classification, and explainability analyses. Extensive experiments conducted on 3D human, animal, and facial expression datasets demonstrate that our simple approach is highly effective in these downstream tasks, comparable or superior to existing methods with much higher complexity.
Citation
M.R. Uddin, J. Armouti, U. Sain, M.A. Rahman, X. Li, M. Xu, "DiLO: Disentangled Latent Optimization for Learning Shape and Deformation in Grouped Deforming 3D Objects," 2026, pp. 9594-9602.
Source
Proceedings of the AAAI Conference on Artificial Intelligence
Conference
AAAI Conference on Artificial Intelligence
Keywords
46 Information and Computing Sciences, 4607 Graphics, Augmented Reality and Games
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Source
AAAI Conference on Artificial Intelligence
Publisher
Association for the Advancement of Artificial Intelligence
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