A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning

In this paper, we propose a new learning strategy for a probabilistic roadmap (PRM) algorithm. The proposed strategy is based on reducing the dispersion of the generated set of samples. We defined a forbidden range around each selected sample and ignored this region in further sampling. The resultan...

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Main Authors: Weria Khaksar, Tang Sai Hong, Mansoor Khaksar, Omid Motlagh
Format: Article
Language:English
Published: SAGE Publishing 2013-11-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.5772/56973
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spelling doaj-09a9b908393a476ebed57eb852ffc3f82020-11-25T02:55:15ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142013-11-011010.5772/5697310.5772_56973A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion PlanningWeria Khaksar0Tang Sai Hong1Mansoor Khaksar2Omid Motlagh3 Department of Mechanical Engineering, University Tenaga National, Jalan IKRAM UNITEN, Malaysia Department of Mechanical Engineering, University Putra Malaysia, Serdang, Selangor Malaysia Department of Industrial Engineering, Sanandaj Branch, Islamic Azad University, Sanandaj, Iran Department of Robotics & Automation, Faculty of Manufacturing Engineering, University Teknikal Malaysia, Melaka, MalaysiaIn this paper, we propose a new learning strategy for a probabilistic roadmap (PRM) algorithm. The proposed strategy is based on reducing the dispersion of the generated set of samples. We defined a forbidden range around each selected sample and ignored this region in further sampling. The resultant planner, called low dispersion-PRM, is an effective multi-query sampling-based planner that is able to solve motion planning queries with smaller graphs. Simulation results indicated that the proposed planner improved the performance of the original PRM and other low-dispersion variants of PRM. Furthermore, the proposed planner is able to solve difficult motion planning instances, including narrow passages and bug traps, which represent particularly difficult tasks for classic sampling-based algorithms. For measuring the uniformity of the generated samples, a new algorithm was created to measure the dispersion of a set of samples based on a predetermined resolution.https://doi.org/10.5772/56973
collection DOAJ
language English
format Article
sources DOAJ
author Weria Khaksar
Tang Sai Hong
Mansoor Khaksar
Omid Motlagh
spellingShingle Weria Khaksar
Tang Sai Hong
Mansoor Khaksar
Omid Motlagh
A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning
International Journal of Advanced Robotic Systems
author_facet Weria Khaksar
Tang Sai Hong
Mansoor Khaksar
Omid Motlagh
author_sort Weria Khaksar
title A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning
title_short A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning
title_full A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning
title_fullStr A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning
title_full_unstemmed A Low Dispersion Probabilistic Roadmaps (LD-PRM) Algorithm for Fast and Efficient Sampling-Based Motion Planning
title_sort low dispersion probabilistic roadmaps (ld-prm) algorithm for fast and efficient sampling-based motion planning
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2013-11-01
description In this paper, we propose a new learning strategy for a probabilistic roadmap (PRM) algorithm. The proposed strategy is based on reducing the dispersion of the generated set of samples. We defined a forbidden range around each selected sample and ignored this region in further sampling. The resultant planner, called low dispersion-PRM, is an effective multi-query sampling-based planner that is able to solve motion planning queries with smaller graphs. Simulation results indicated that the proposed planner improved the performance of the original PRM and other low-dispersion variants of PRM. Furthermore, the proposed planner is able to solve difficult motion planning instances, including narrow passages and bug traps, which represent particularly difficult tasks for classic sampling-based algorithms. For measuring the uniformity of the generated samples, a new algorithm was created to measure the dispersion of a set of samples based on a predetermined resolution.
url https://doi.org/10.5772/56973
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