Smoothing Algorithm of Point Cloud Based on Normal Vector Correction

The presence of outliers and noise points in the cloud data of the reverse engineering data collection directly affects the mult-view’s combination of the data,feature extraction,data reduction and the quality of surface reconstruction. Based on the research of bilateral filtering and trilateration...

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Main Authors: XUE Ping, YAO Juan, ZOU Xue-zhou, WANG Hong-min
Format: Article
Language:zho
Published: Harbin University of Science and Technology Publications 2018-10-01
Series:Journal of Harbin University of Science and Technology
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Online Access:https://hlgxb.hrbust.edu.cn/#/digest?ArticleID=1589
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author XUE Ping
YAO Juan
ZOU Xue-zhou
WANG Hong-min
author_facet XUE Ping
YAO Juan
ZOU Xue-zhou
WANG Hong-min
author_sort XUE Ping
collection DOAJ
description The presence of outliers and noise points in the cloud data of the reverse engineering data collection directly affects the mult-view’s combination of the data,feature extraction,data reduction and the quality of surface reconstruction. Based on the research of bilateral filtering and trilateration filtering algorithm,this paper presents an algorithm of denoising and smoothing of point cloud data based on normal vector correction. Firstly,the local neighborhood of the point cloud data is constructed,and the noise points of the scattered data collected by the data acquisition system are classified and processed. For outliers in the point cloud data,mathematical statistics analysis is used to filter out the points whose KNN is lower than the threshold. The points with similar geometric characteristics are restricted to the regions where the normal vectors are similar,and the normal vectors and positions of the samples in the similar neighborhoods are triangulated . The improved algorithm can effectively filter the outliers and noise points in the point cloud data,and ensure the sharp and edge features of the point cloud data and obtain good denoising effect.
format Article
id doaj-art-a75e218a29ce459c95d15cbb6d8ed3ec
institution Kabale University
issn 1007-2683
language zho
publishDate 2018-10-01
publisher Harbin University of Science and Technology Publications
record_format Article
series Journal of Harbin University of Science and Technology
spelling doaj-art-a75e218a29ce459c95d15cbb6d8ed3ec2025-08-21T05:29:29ZzhoHarbin University of Science and Technology PublicationsJournal of Harbin University of Science and Technology1007-26832018-10-012305869110.15938/j.jhust.2018.05.015Smoothing Algorithm of Point Cloud Based on Normal Vector CorrectionXUE Ping0YAO Juan1ZOU Xue-zhou2WANG Hong-min3School of Automation,Harbin University of Science and Technology,Harbin 150080,ChinaSchool of Automation,Harbin University of Science and Technology,Harbin 150080,ChinaSchool of Automation,Harbin University of Science and Technology,Harbin 150080,ChinaSchool of Automation,Harbin University of Science and Technology,Harbin 150080,ChinaThe presence of outliers and noise points in the cloud data of the reverse engineering data collection directly affects the mult-view’s combination of the data,feature extraction,data reduction and the quality of surface reconstruction. Based on the research of bilateral filtering and trilateration filtering algorithm,this paper presents an algorithm of denoising and smoothing of point cloud data based on normal vector correction. Firstly,the local neighborhood of the point cloud data is constructed,and the noise points of the scattered data collected by the data acquisition system are classified and processed. For outliers in the point cloud data,mathematical statistics analysis is used to filter out the points whose KNN is lower than the threshold. The points with similar geometric characteristics are restricted to the regions where the normal vectors are similar,and the normal vectors and positions of the samples in the similar neighborhoods are triangulated . The improved algorithm can effectively filter the outliers and noise points in the point cloud data,and ensure the sharp and edge features of the point cloud data and obtain good denoising effect.https://hlgxb.hrbust.edu.cn/#/digest?ArticleID=1589point cloud datadenoising smoothingweighted covariance matrixtrilateration filteringnormal vector correction
spellingShingle XUE Ping
YAO Juan
ZOU Xue-zhou
WANG Hong-min
Smoothing Algorithm of Point Cloud Based on Normal Vector Correction
Journal of Harbin University of Science and Technology
point cloud data
denoising smoothing
weighted covariance matrix
trilateration filtering
normal vector correction
title Smoothing Algorithm of Point Cloud Based on Normal Vector Correction
title_full Smoothing Algorithm of Point Cloud Based on Normal Vector Correction
title_fullStr Smoothing Algorithm of Point Cloud Based on Normal Vector Correction
title_full_unstemmed Smoothing Algorithm of Point Cloud Based on Normal Vector Correction
title_short Smoothing Algorithm of Point Cloud Based on Normal Vector Correction
title_sort smoothing algorithm of point cloud based on normal vector correction
topic point cloud data
denoising smoothing
weighted covariance matrix
trilateration filtering
normal vector correction
url https://hlgxb.hrbust.edu.cn/#/digest?ArticleID=1589
work_keys_str_mv AT xueping smoothingalgorithmofpointcloudbasedonnormalvectorcorrection
AT yaojuan smoothingalgorithmofpointcloudbasedonnormalvectorcorrection
AT zouxuezhou smoothingalgorithmofpointcloudbasedonnormalvectorcorrection
AT wanghongmin smoothingalgorithmofpointcloudbasedonnormalvectorcorrection