Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling

Abstract A new accurate and robust non-rigid point set registration method, named DSMM, is proposed for non-rigid point set registration in the presence of significant amounts of missing correspondences and outliers. The key idea of this algorithm is to consider the relationship between the point se...

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Main Authors: Zhiyong Zhou, Jianfei Tu, Chen Geng, Jisu Hu, Baotong Tong, Jiansong Ji, Yakang Dai
Format: Article
Language:English
Published: Nature Publishing Group 2018-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-018-26288-6
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spelling doaj-c343247361e44211823689f58ededbaf2020-12-08T06:02:49ZengNature Publishing GroupScientific Reports2045-23222018-06-018111710.1038/s41598-018-26288-6Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability ModelingZhiyong Zhou0Jianfei Tu1Chen Geng2Jisu Hu3Baotong Tong4Jiansong Ji5Yakang Dai6Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of SciencesLishui Central HospitalSuzhou Institute of Biomedical Engineering and Technology, Chinese Academy of SciencesSuzhou Institute of Biomedical Engineering and Technology, Chinese Academy of SciencesSuzhou Institute of Biomedical Engineering and Technology, Chinese Academy of SciencesLishui Central HospitalSuzhou Institute of Biomedical Engineering and Technology, Chinese Academy of SciencesAbstract A new accurate and robust non-rigid point set registration method, named DSMM, is proposed for non-rigid point set registration in the presence of significant amounts of missing correspondences and outliers. The key idea of this algorithm is to consider the relationship between the point sets as random variables and model the prior probabilities via Dirichlet distribution. We assign the various prior probabilities of each point to its correspondences in the Student’s-t mixture model. We later incorporate the local spatial representation of the point sets by representing the posterior probabilities in a linear smoothing filter and get closed-form mixture proportions, leading to a computationally efficient registration algorithm comparing to other Student’s-t mixture model based methods. Finally, by introducing the hidden random variables in the Bayesian framework, we propose a general mixture model family for generalizing the mixture-model-based point set registration, where the existing methods can be considered as members of the proposed family. We evaluate DSMM and other state-of-the-art finite mixture models based point set registration algorithms on both artificial point set and various 2D and 3D point sets, where DSMM demonstrates its statistical accuracy and robustness, outperforming the competing algorithms.https://doi.org/10.1038/s41598-018-26288-6
collection DOAJ
language English
format Article
sources DOAJ
author Zhiyong Zhou
Jianfei Tu
Chen Geng
Jisu Hu
Baotong Tong
Jiansong Ji
Yakang Dai
spellingShingle Zhiyong Zhou
Jianfei Tu
Chen Geng
Jisu Hu
Baotong Tong
Jiansong Ji
Yakang Dai
Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling
Scientific Reports
author_facet Zhiyong Zhou
Jianfei Tu
Chen Geng
Jisu Hu
Baotong Tong
Jiansong Ji
Yakang Dai
author_sort Zhiyong Zhou
title Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling
title_short Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling
title_full Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling
title_fullStr Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling
title_full_unstemmed Accurate and Robust Non-rigid Point Set Registration using Student’s-t Mixture Model with Prior Probability Modeling
title_sort accurate and robust non-rigid point set registration using student’s-t mixture model with prior probability modeling
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2018-06-01
description Abstract A new accurate and robust non-rigid point set registration method, named DSMM, is proposed for non-rigid point set registration in the presence of significant amounts of missing correspondences and outliers. The key idea of this algorithm is to consider the relationship between the point sets as random variables and model the prior probabilities via Dirichlet distribution. We assign the various prior probabilities of each point to its correspondences in the Student’s-t mixture model. We later incorporate the local spatial representation of the point sets by representing the posterior probabilities in a linear smoothing filter and get closed-form mixture proportions, leading to a computationally efficient registration algorithm comparing to other Student’s-t mixture model based methods. Finally, by introducing the hidden random variables in the Bayesian framework, we propose a general mixture model family for generalizing the mixture-model-based point set registration, where the existing methods can be considered as members of the proposed family. We evaluate DSMM and other state-of-the-art finite mixture models based point set registration algorithms on both artificial point set and various 2D and 3D point sets, where DSMM demonstrates its statistical accuracy and robustness, outperforming the competing algorithms.
url https://doi.org/10.1038/s41598-018-26288-6
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