Point cloud clustering and outlier detection based on spatial neighbor connected region labeling
Clustering analysis is one of the most important techniques in point cloud processing, such as registration, segmentation, and outlier detection. However, most of the existing clustering algorithms exhibit a low computational efficiency with the high demand for computational resources, especially fo...
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doaj-1da7030e1b964f7c82452804252e11572021-09-02T23:05:19ZengSAGE PublishingMeasurement + Control0020-29402021-05-015410.1177/0020294020919869Point cloud clustering and outlier detection based on spatial neighbor connected region labelingXiaocui Yuan0Huawei Chen1Baoling Liu2Jiangxi Province Key Laboratory of Precision Drive & Control, Nanchang Institute of Technology, Nanchang, ChinaSchool of Mechanical and Electrical Engineering, Guizhou Normal University, Guiyang, ChinaJiangxi Province Key Laboratory of Precision Drive & Control, Nanchang Institute of Technology, Nanchang, ChinaClustering analysis is one of the most important techniques in point cloud processing, such as registration, segmentation, and outlier detection. However, most of the existing clustering algorithms exhibit a low computational efficiency with the high demand for computational resources, especially for large data processing. Sometimes, clusters and outliers are inseparable, especially for those point clouds with outliers. Most of the cluster-based algorithms can well identify cluster outliers but sparse outliers. We develop a novel clustering method, called spatial neighborhood connected region labeling. The method defines spatial connectivity criterion, finds points connections based on the connectivity criterion among the k- nearest neighborhood region and classifies connected points to the same cluster. Our method can accurately and quickly classify datasets using only one parameter k . Comparing with K -means, hierarchical clustering and density-based spatial clustering of applications with noise methods, our method provides better accuracy using less computational time for data clustering. For applications in the outlier detection of the point cloud, our method can identify not only cluster outliers, but also sparse outliers. More accurate detection results are achieved compared to the state-of-art outlier detection methods, such as local outlier factor and density-based spatial clustering of applications with noise.https://doi.org/10.1177/0020294020919869 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Xiaocui Yuan Huawei Chen Baoling Liu |
spellingShingle |
Xiaocui Yuan Huawei Chen Baoling Liu Point cloud clustering and outlier detection based on spatial neighbor connected region labeling Measurement + Control |
author_facet |
Xiaocui Yuan Huawei Chen Baoling Liu |
author_sort |
Xiaocui Yuan |
title |
Point cloud clustering and outlier detection based on spatial neighbor connected region labeling |
title_short |
Point cloud clustering and outlier detection based on spatial neighbor connected region labeling |
title_full |
Point cloud clustering and outlier detection based on spatial neighbor connected region labeling |
title_fullStr |
Point cloud clustering and outlier detection based on spatial neighbor connected region labeling |
title_full_unstemmed |
Point cloud clustering and outlier detection based on spatial neighbor connected region labeling |
title_sort |
point cloud clustering and outlier detection based on spatial neighbor connected region labeling |
publisher |
SAGE Publishing |
series |
Measurement + Control |
issn |
0020-2940 |
publishDate |
2021-05-01 |
description |
Clustering analysis is one of the most important techniques in point cloud processing, such as registration, segmentation, and outlier detection. However, most of the existing clustering algorithms exhibit a low computational efficiency with the high demand for computational resources, especially for large data processing. Sometimes, clusters and outliers are inseparable, especially for those point clouds with outliers. Most of the cluster-based algorithms can well identify cluster outliers but sparse outliers. We develop a novel clustering method, called spatial neighborhood connected region labeling. The method defines spatial connectivity criterion, finds points connections based on the connectivity criterion among the k- nearest neighborhood region and classifies connected points to the same cluster. Our method can accurately and quickly classify datasets using only one parameter k . Comparing with K -means, hierarchical clustering and density-based spatial clustering of applications with noise methods, our method provides better accuracy using less computational time for data clustering. For applications in the outlier detection of the point cloud, our method can identify not only cluster outliers, but also sparse outliers. More accurate detection results are achieved compared to the state-of-art outlier detection methods, such as local outlier factor and density-based spatial clustering of applications with noise. |
url |
https://doi.org/10.1177/0020294020919869 |
work_keys_str_mv |
AT xiaocuiyuan pointcloudclusteringandoutlierdetectionbasedonspatialneighborconnectedregionlabeling AT huaweichen pointcloudclusteringandoutlierdetectionbasedonspatialneighborconnectedregionlabeling AT baolingliu pointcloudclusteringandoutlierdetectionbasedonspatialneighborconnectedregionlabeling |
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