Non-parametric workspace modelling for mobile robots using push broom lasers

<p>This thesis is about the intelligent compression of large 3D point cloud datasets. The non-parametric method that we describe simultaneously generates a continuous representation of the workspace surfaces from discrete laser samples and decimates the dataset, retaining only locally salient...

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Bibliographic Details
Main Author: Smith, M
Other Authors: Newman, P
Format: Thesis
Language:English
Published: 2011
Subjects:
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author Smith, M
author2 Newman, P
author_facet Newman, P
Smith, M
author_sort Smith, M
collection OXFORD
description <p>This thesis is about the intelligent compression of large 3D point cloud datasets. The non-parametric method that we describe simultaneously generates a continuous representation of the workspace surfaces from discrete laser samples and decimates the dataset, retaining only locally salient samples. Our framework attains decimation factors in excess of two orders of magnitude without significant degradation in fidelity.</p> <p>The work presented here has a specific focus on gathering and processing laser measurements taken from a moving platform in outdoor workspaces. We introduce a somewhat unusual parameterisation of the problem and look to Gaussian Processes as the fundamental machinery in our processing pipeline. Our system compresses laser data in a fashion that is naturally sympathetic to the underlying structure and complexity of the workspace. In geometrically complex areas, compression is lower than that in geometrically bland areas. We focus on this property in detail and it leads us well beyond a simple application of non-parametric techniques. Indeed, towards the end of the thesis we develop a non-stationary GP framework whereby our regression model adapts to the local workspace complexity.</p> <p>Throughout we construct our algorithms so that they may be efficiently implemented. In addition, we present a detailed analysis of the proposed system and investigate model parameters, metric errors and data compression rates. Finally, we note that this work is predicated on a substantial amount of robotics engineering which has allowed us to produce a high quality, peer reviewed, dataset - the first of its kind.</p>
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spelling oxford-uuid:50224eb9-73e8-4c8a-b8c5-18360d11e21b2024-12-08T11:59:54ZNon-parametric workspace modelling for mobile robots using push broom lasersThesishttp://purl.org/coar/resource_type/c_db06uuid:50224eb9-73e8-4c8a-b8c5-18360d11e21bInformation EngineeringRoboticsElectronicsMechanical EngineeringEnglishOxford University Research Archive - Valet2011Smith, MNewman, P<p>This thesis is about the intelligent compression of large 3D point cloud datasets. The non-parametric method that we describe simultaneously generates a continuous representation of the workspace surfaces from discrete laser samples and decimates the dataset, retaining only locally salient samples. Our framework attains decimation factors in excess of two orders of magnitude without significant degradation in fidelity.</p> <p>The work presented here has a specific focus on gathering and processing laser measurements taken from a moving platform in outdoor workspaces. We introduce a somewhat unusual parameterisation of the problem and look to Gaussian Processes as the fundamental machinery in our processing pipeline. Our system compresses laser data in a fashion that is naturally sympathetic to the underlying structure and complexity of the workspace. In geometrically complex areas, compression is lower than that in geometrically bland areas. We focus on this property in detail and it leads us well beyond a simple application of non-parametric techniques. Indeed, towards the end of the thesis we develop a non-stationary GP framework whereby our regression model adapts to the local workspace complexity.</p> <p>Throughout we construct our algorithms so that they may be efficiently implemented. In addition, we present a detailed analysis of the proposed system and investigate model parameters, metric errors and data compression rates. Finally, we note that this work is predicated on a substantial amount of robotics engineering which has allowed us to produce a high quality, peer reviewed, dataset - the first of its kind.</p>
spellingShingle Information Engineering
Robotics
Electronics
Mechanical Engineering
Smith, M
Non-parametric workspace modelling for mobile robots using push broom lasers
title Non-parametric workspace modelling for mobile robots using push broom lasers
title_full Non-parametric workspace modelling for mobile robots using push broom lasers
title_fullStr Non-parametric workspace modelling for mobile robots using push broom lasers
title_full_unstemmed Non-parametric workspace modelling for mobile robots using push broom lasers
title_short Non-parametric workspace modelling for mobile robots using push broom lasers
title_sort non parametric workspace modelling for mobile robots using push broom lasers
topic Information Engineering
Robotics
Electronics
Mechanical Engineering
work_keys_str_mv AT smithm nonparametricworkspacemodellingformobilerobotsusingpushbroomlasers