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Robust Non-Rigid Registration with Reweighted Position and Transformation Sparsity.

作者信息

Li Kun, Yang Jingyu, Lai Yu-Kun, Guo Daoliang

出版信息

IEEE Trans Vis Comput Graph. 2019 Jun;25(6):2255-2269. doi: 10.1109/TVCG.2018.2832136. Epub 2018 May 2.

Abstract

Non-rigid registration is challenging because it is ill-posed with high degrees of freedom and is thus sensitive to noise and outliers. We propose a robust non-rigid registration method using reweighted sparsities on position and transformation to estimate the deformations between 3-D shapes. We formulate the energy function with position and transformation sparsity on both the data term and the smoothness term, and define the smoothness constraint using local rigidity. The double sparsity based non-rigid registration model is enhanced with a reweighting scheme, and solved by transferring the model into four alternately-optimized subproblems which have exact solutions and guaranteed convergence. Experimental results on both public datasets and real scanned datasets show that our method outperforms the state-of-the-art methods and is more robust to noise and outliers than conventional non-rigid registration methods.

摘要

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