Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction

<p>Mobile robot localization and mapping in unknown environments is a fundamental requirement for effective autonomous navigation. Three different approaches to localization and mapping are presented. Each is based on data collected from a robot using a dense range scanner to generate a plan...

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Main Author: Pfister, Samuel Thomas
Format: Others
Published: 2006
Online Access:https://thesis.library.caltech.edu/2110/1/pfister_thesis_full.pdf
Pfister, Samuel Thomas (2006) Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction. Dissertation (Ph.D.), California Institute of Technology. doi:10.7907/FN3J-M568. https://resolver.caltech.edu/CaltechETD:etd-05262006-130209 <https://resolver.caltech.edu/CaltechETD:etd-05262006-130209>
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spelling ndltd-CALTECH-oai-thesis.library.caltech.edu-21102020-04-21T03:02:32Z Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction Pfister, Samuel Thomas <p>Mobile robot localization and mapping in unknown environments is a fundamental requirement for effective autonomous navigation. Three different approaches to localization and mapping are presented. Each is based on data collected from a robot using a dense range scanner to generate a planar representation of the surrounding environment. This externally sensed range data is then overlayed and correlated to estimate the robot's position and build a map.</p> <p>The three approaches differ in the choice of representation of the range data, but all achieve improvements over prior work using detailed sensor modeling and rigorous bookkeeping of the modeled uncertainty in the estimation processes. In the first approach, the raw range data points collected from two different positions are individually weighted and aligned to estimate the relative robot displacement. In the second approach, line segment features are extracted from the raw point data and are used as the basis for efficient and robust global map construction and localization. In the third approach, a new multi-scale data representation is introduced. New methods of localization and mapping are developed, taking advantage of this multi-scale representation to achieve significant improvements in computational complexity. A central focus of all three approaches is the determination of accurate and robust solutions to the data association problem, which is critical to the accuracy of any sensor-based localization and mapping method.</p> <p>Experiments using data collected from a Sick LMS-200 laser scanner illustrate the effectiveness of the algorithms and improvements over prior work. All methods are capable of being run in real time on a mobile robot, and can be used to support fully autonomous navigation applications.</p> 2006 Thesis NonPeerReviewed application/pdf https://thesis.library.caltech.edu/2110/1/pfister_thesis_full.pdf https://resolver.caltech.edu/CaltechETD:etd-05262006-130209 Pfister, Samuel Thomas (2006) Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction. Dissertation (Ph.D.), California Institute of Technology. doi:10.7907/FN3J-M568. https://resolver.caltech.edu/CaltechETD:etd-05262006-130209 <https://resolver.caltech.edu/CaltechETD:etd-05262006-130209> https://thesis.library.caltech.edu/2110/
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description <p>Mobile robot localization and mapping in unknown environments is a fundamental requirement for effective autonomous navigation. Three different approaches to localization and mapping are presented. Each is based on data collected from a robot using a dense range scanner to generate a planar representation of the surrounding environment. This externally sensed range data is then overlayed and correlated to estimate the robot's position and build a map.</p> <p>The three approaches differ in the choice of representation of the range data, but all achieve improvements over prior work using detailed sensor modeling and rigorous bookkeeping of the modeled uncertainty in the estimation processes. In the first approach, the raw range data points collected from two different positions are individually weighted and aligned to estimate the relative robot displacement. In the second approach, line segment features are extracted from the raw point data and are used as the basis for efficient and robust global map construction and localization. In the third approach, a new multi-scale data representation is introduced. New methods of localization and mapping are developed, taking advantage of this multi-scale representation to achieve significant improvements in computational complexity. A central focus of all three approaches is the determination of accurate and robust solutions to the data association problem, which is critical to the accuracy of any sensor-based localization and mapping method.</p> <p>Experiments using data collected from a Sick LMS-200 laser scanner illustrate the effectiveness of the algorithms and improvements over prior work. All methods are capable of being run in real time on a mobile robot, and can be used to support fully autonomous navigation applications.</p>
author Pfister, Samuel Thomas
spellingShingle Pfister, Samuel Thomas
Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction
author_facet Pfister, Samuel Thomas
author_sort Pfister, Samuel Thomas
title Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction
title_short Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction
title_full Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction
title_fullStr Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction
title_full_unstemmed Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction
title_sort algorithms for mobile robot localization and mapping, incorporating detailed noise modeling and multi-scale feature extraction
publishDate 2006
url https://thesis.library.caltech.edu/2110/1/pfister_thesis_full.pdf
Pfister, Samuel Thomas (2006) Algorithms for Mobile Robot Localization and Mapping, Incorporating Detailed Noise Modeling and Multi-scale Feature Extraction. Dissertation (Ph.D.), California Institute of Technology. doi:10.7907/FN3J-M568. https://resolver.caltech.edu/CaltechETD:etd-05262006-130209 <https://resolver.caltech.edu/CaltechETD:etd-05262006-130209>
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