%A ZENG Jun-fei,YANG Hai-qing,WU Hao %T Adaptive Levenberg-Marquardt Cloud Registration Method for 3D Reconstruction %0 Journal Article %D 2020 %J Computer Science %R 10.11896/jsjkx.190200261 %P 137-142 %V 47 %N 3 %U {https://www.jsjkx.com/CN/abstract/article_18929.shtml} %8 2020-03-15 %X To address the problems that point cloud registration process in three-dimensional (3D) reconstruction is susceptible to environmental noise,point cloud exposure,illumination,object occlusion and other factors,as well as the traditional ICP registration algorithm with low accuracy and long time-consuming,this paper proposed a point cloud registration algorithm based on adaptive Levenberg-Marquart.Firstly,the initial point cloud data is pretreated by way of statistical filtering and voxel raster filtering,and then the filtered point cloud is stratified to eliminate the outlier data,so as to improve the accuracy of subsequent point cloud registration.Furthermore,aiming at the problem that traditional point cloud feature description method is computation-intensive,smoothness parameter is adopted to conduct extracting point cloud features and improve the efficiency of point cloud re-gistration.Finally,the point-to-line and point-to-surface constraints between frames are established on the basis of the point cloud features,and the modified Levenberg-Marquardt method is utilized to realize point cloud registration,so as to construct a satis-fying 3D reconstruction model.The experimental results show that the proposed point cloud registration method is suitable for 3D reconstruction of indoor and outdoor scenes,with outstanding environmental adaptability.Meanwhile,the accuracy and efficiency of point cloud registration are greatly improved compared with the traditional methods.