Journal of Xidian University ›› 2023, Vol. 50 ›› Issue (5): 95-106.doi: 10.19665/j.issn1001-2400.20230411

• Information and Communications Engineering & Computer Science and Technology • Previous Articles     Next Articles

Point set registration optimization algorithm using spatial clustering and structural features

HU Xin1(),XIANG Diyuan1(),QIN Hao1(),XIAO Jian2()   

  1. 1. School of Energy and Electrical Engineering,Chang’an University,Xi’an 710064,China
    2. School of Electrical and Control Engineering,Chang’an University,Xi’an 710064,China
  • Received:2023-02-22 Online:2023-10-20 Published:2023-11-21
  • Contact: Jian XIAO E-mail:huxin@chd.edu.cn;2020132024@chd.edu.cn;2020132021@chd.edu.cn;xiaojian@chd.edu.cn

Abstract:

The existence of noise,non-rigid deformation and mis-matching in point set registration results in the difficulty of solving nonlinear optimal space transformation.This paper introduces local constraints and proposes a point set registration optimization algorithm using spatial distance clustering and local structural features(PR-SDCLS).First,the motion consistency clustering subset and outlier clustering subset are constructed by using the point set space distance matrix;Then,the Gaussian mixture model is used to fit the motion consistency cluster subset,and the mixing coefficient considering global and local features is obtained by fusing the shape context feature descriptor and weighted spatial distance.Finally,the maximum expectation algorithm is used to complete the parameter estimation,and the non-rigid point set registration model of the Gaussian mixture model is realized.In order to improve the efficiency of the algorithm,the model transformation uses the reproducing kernel Hilbert space model,and uses the kernel approximation strategy.Experimental results show that the algorithm has a good registration effect and robustness in the face of a large number of outliers on non-rigid data sets involving different types of data degradation(deformation,noise,outliers,occlusion and rotation),and the mean value of registration average error is reduced by 42.053 8% on the basis of classic and advanced algorithms.

Key words: registration, non-rigid, Gaussian mixture model, EM algorithm

CLC Number: 

  • TP391