Alternative Methods for Estimating Plane Parameters Based on a Point Cloud

Non-contact measurement techniques carried out using triangulation optical sensors are increasingly popular in measurements with the use of industrial robots directly on production lines. The result of such measurements is often a cloud of measurement points that is characterized by considerable mea...

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Main Author: Stryczek Roman
Format: Article
Language:English
Published: Sciendo 2017-12-01
Series:Measurement Science Review
Subjects:
Online Access:http://www.degruyter.com/view/j/msr.2017.17.issue-6/msr-2017-0035/msr-2017-0035.xml?format=INT
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spelling doaj-b30e751b01aa463fbf9dfc7afc7d36e52020-11-24T22:47:19ZengSciendoMeasurement Science Review1335-88712017-12-0117628228910.1515/msr-2017-0035msr-2017-0035Alternative Methods for Estimating Plane Parameters Based on a Point CloudStryczek Roman0University of Bielsko-Biala, Faculty of Mechanical Engineering and Computer Science, Department of Production Engineering and Automation., Willowa 2, Bielsko-Biała, PolandNon-contact measurement techniques carried out using triangulation optical sensors are increasingly popular in measurements with the use of industrial robots directly on production lines. The result of such measurements is often a cloud of measurement points that is characterized by considerable measuring noise, presence of a number of points that differ from the reference model, and excessive errors that must be eliminated from the analysis. To obtain vector information points contained in the cloud that describe reference models, the data obtained during a measurement should be subjected to appropriate processing operations. The present paperwork presents an analysis of suitability of methods known as RANdom Sample Consensus (RANSAC), Monte Carlo Method (MCM), and Particle Swarm Optimization (PSO) for the extraction of the reference model. The effectiveness of the tested methods is illustrated by examples of measurement of the height of an object and the angle of a plane, which were made on the basis of experiments carried out at workshop conditions.http://www.degruyter.com/view/j/msr.2017.17.issue-6/msr-2017-0035/msr-2017-0035.xml?format=INTRobotic inspectionplane detectionParticle Swarm OptimizationRANSACMonte Carlo Method
collection DOAJ
language English
format Article
sources DOAJ
author Stryczek Roman
spellingShingle Stryczek Roman
Alternative Methods for Estimating Plane Parameters Based on a Point Cloud
Measurement Science Review
Robotic inspection
plane detection
Particle Swarm Optimization
RANSAC
Monte Carlo Method
author_facet Stryczek Roman
author_sort Stryczek Roman
title Alternative Methods for Estimating Plane Parameters Based on a Point Cloud
title_short Alternative Methods for Estimating Plane Parameters Based on a Point Cloud
title_full Alternative Methods for Estimating Plane Parameters Based on a Point Cloud
title_fullStr Alternative Methods for Estimating Plane Parameters Based on a Point Cloud
title_full_unstemmed Alternative Methods for Estimating Plane Parameters Based on a Point Cloud
title_sort alternative methods for estimating plane parameters based on a point cloud
publisher Sciendo
series Measurement Science Review
issn 1335-8871
publishDate 2017-12-01
description Non-contact measurement techniques carried out using triangulation optical sensors are increasingly popular in measurements with the use of industrial robots directly on production lines. The result of such measurements is often a cloud of measurement points that is characterized by considerable measuring noise, presence of a number of points that differ from the reference model, and excessive errors that must be eliminated from the analysis. To obtain vector information points contained in the cloud that describe reference models, the data obtained during a measurement should be subjected to appropriate processing operations. The present paperwork presents an analysis of suitability of methods known as RANdom Sample Consensus (RANSAC), Monte Carlo Method (MCM), and Particle Swarm Optimization (PSO) for the extraction of the reference model. The effectiveness of the tested methods is illustrated by examples of measurement of the height of an object and the angle of a plane, which were made on the basis of experiments carried out at workshop conditions.
topic Robotic inspection
plane detection
Particle Swarm Optimization
RANSAC
Monte Carlo Method
url http://www.degruyter.com/view/j/msr.2017.17.issue-6/msr-2017-0035/msr-2017-0035.xml?format=INT
work_keys_str_mv AT stryczekroman alternativemethodsforestimatingplaneparametersbasedonapointcloud
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