Advanced Methods for Point Cloud Processing and Simplification

Nowadays, mobile robot exploration needs a rangefinder to obtain a large number of measurement points to achieve a detailed and precise description of a surrounding area and objects, which is called the point cloud. However, a single point cloud scan does not cover the whole area, so multiple point...

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Published in:Applied Sciences
Main Authors: Pavel Chmelar, Lubos Rejfek, Tan N. Nguyen, Duy-Hung Ha
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/10/3340
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author Pavel Chmelar
Lubos Rejfek
Tan N. Nguyen
Duy-Hung Ha
author_facet Pavel Chmelar
Lubos Rejfek
Tan N. Nguyen
Duy-Hung Ha
author_sort Pavel Chmelar
collection DOAJ
container_title Applied Sciences
description Nowadays, mobile robot exploration needs a rangefinder to obtain a large number of measurement points to achieve a detailed and precise description of a surrounding area and objects, which is called the point cloud. However, a single point cloud scan does not cover the whole area, so multiple point cloud scans must be acquired and compared together to find the right matching between them in a process called registration method. This method requires further processing and places high demands on memory consumption, especially for small embedded devices in mobile robots. This paper describes a novel method to reduce the burden of processing for multiple point cloud scans. We introduce our approach to preprocess an input point cloud in order to detect planar surfaces, simplify space description, fill gaps in point clouds, and get important space features. All of these processes are achieved by applying advanced image processing methods in combination with the quantization of physical space points. The results show the reliability of our approach to detect close parallel walls with suitable parameter settings. More importantly, planar surface detection shows a 99% decrease in necessary descriptive points almost in all cases. This proposed approach is verified on the real indoor point clouds.
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spelling doaj-art-5a66c1b341f14c8bbc78fc32e84c839f2025-08-19T22:37:13ZengMDPI AGApplied Sciences2076-34172020-05-011010334010.3390/app10103340Advanced Methods for Point Cloud Processing and SimplificationPavel Chmelar0Lubos Rejfek1Tan N. Nguyen2Duy-Hung Ha3Faculty of Electrical Engineering and Informatics, University of Pardubice, 532 10 Pardubice, Czech RepublicFaculty of Electrical Engineering and Informatics, University of Pardubice, 532 10 Pardubice, Czech RepublicWireless Communications Research Group, Faculty of Electrical and Electronics Engineering, Ton Duc Thang University, Ho Chi Minh City 700000, VietnamFaculty of Electrical Engineering and Computer Science, VSB—Technical University of Ostrava, 17, Listopadu 2172/15, 708 00 Ostrava, Czech RepublicNowadays, mobile robot exploration needs a rangefinder to obtain a large number of measurement points to achieve a detailed and precise description of a surrounding area and objects, which is called the point cloud. However, a single point cloud scan does not cover the whole area, so multiple point cloud scans must be acquired and compared together to find the right matching between them in a process called registration method. This method requires further processing and places high demands on memory consumption, especially for small embedded devices in mobile robots. This paper describes a novel method to reduce the burden of processing for multiple point cloud scans. We introduce our approach to preprocess an input point cloud in order to detect planar surfaces, simplify space description, fill gaps in point clouds, and get important space features. All of these processes are achieved by applying advanced image processing methods in combination with the quantization of physical space points. The results show the reliability of our approach to detect close parallel walls with suitable parameter settings. More importantly, planar surface detection shows a 99% decrease in necessary descriptive points almost in all cases. This proposed approach is verified on the real indoor point clouds.https://www.mdpi.com/2076-3417/10/10/3340point cloudimage processingplanar surface detectionsimplificationvisualization
spellingShingle Pavel Chmelar
Lubos Rejfek
Tan N. Nguyen
Duy-Hung Ha
Advanced Methods for Point Cloud Processing and Simplification
point cloud
image processing
planar surface detection
simplification
visualization
title Advanced Methods for Point Cloud Processing and Simplification
title_full Advanced Methods for Point Cloud Processing and Simplification
title_fullStr Advanced Methods for Point Cloud Processing and Simplification
title_full_unstemmed Advanced Methods for Point Cloud Processing and Simplification
title_short Advanced Methods for Point Cloud Processing and Simplification
title_sort advanced methods for point cloud processing and simplification
topic point cloud
image processing
planar surface detection
simplification
visualization
url https://www.mdpi.com/2076-3417/10/10/3340
work_keys_str_mv AT pavelchmelar advancedmethodsforpointcloudprocessingandsimplification
AT lubosrejfek advancedmethodsforpointcloudprocessingandsimplification
AT tannnguyen advancedmethodsforpointcloudprocessingandsimplification
AT duyhungha advancedmethodsforpointcloudprocessingandsimplification