Sparse Non-rigid Registration of 3D Shapes
Jingyu Yang, Ke Li, Kun Li, Yu-Kun Lai
In Computer Graphics Forum, 34(5), 2015.
Abstract: Non-rigid registration of 3D shapes is an essential task of increasing importance as commodity depth sensors become more widely available for scanning dynamic scenes. Non-rigid registration is much more challenging than rigid registration as it estimates a set of local transformations instead of a single global transformation, and hence is prone to the overfitting issue due to underdetermination. The common wisdom in previous methods is to impose an ℓ2-norm regularization on the local transformation differences. However, the ℓ2-norm regularization tends to bias the solution towards outliers and noise with heavy-tailed distribution, which is verified by the poor goodness-of-fit of the Gaussian distribution over transformation differences. On the contrary, Laplacian distribution fits well with the transformation differences, suggesting the use of a sparsity prior. We propose a sparse non-rigid registration (SNR) method with an ℓ1-norm regularized model for transformation estimation, which is effectively solved by an alternate direction method (ADM) under the augmented Lagrangian framework. We also devise a multi-resolution scheme for robust and progressive registration. Results on both public datasets and our scanned datasets show the superiority of our method, particularly in handling large-scale deformations as well as outliers and noise.
Keyword(s): Categories and Subject Descriptors (according to ACM CCS), I.3.5 [Computer Graphics]: Computational Geometry and Object Modeling—Hierarchy and geometric transformations
@article{CGF:CGF12699,
author = {Jingyu Yang and Ke Li and Kun Li and Yu-Kun Lai},
title = {Sparse Non-rigid Registration of 3D Shapes},
journal = {Computer Graphics Forum},
volume = {34},
number = {5},
pages = {89--99},
year = {2015},
}
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