From Deformations to Parts: Motion-based Segmentation of 3D Objects

October 16, 2016 From Deformations to Parts: Motion-based Segmentation of 3D Objects

We develop a method for discovering the parts of an articulated object from aligned meshes of the object in various three-dimensional poses. We adapt the distance dependent Chinese restaurant process (ddCRP) to allow nonparametric discovery of a potentially unbounded number of parts, while simultaneously guaranteeing a spatially connected segmentation. To allow analysis of datasets in which object instances have varying 3D shapes, we model part variability across poses via affine transformations. By placing a matrix normal-inverse-Wishart prior on these affine transformations, we develop a ddCRP Gibbs sampler which tractably marginalizes over transformation uncertainty. Analyzing a dataset of humans captured in dozens of poses, we infer parts which provide quantitatively better deformation predictions than conventional clustering methods.

Reference

Ghosh, S., Sudderth, E., Loper, M., Black, M. J.

In Advances in Neural Information Processing Systems 25 (NIPS), pages: 2006-2014, MIT Press, 2012

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