Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration

Future missions to Mars will place heavy emphasis on scientific sample and return operations, which will require a rover to revisit sites of interest. Visual Teach and Repeat (VT&R) has proven to be an effective method to enable autonomous repeating of any previously driven route without a globa...

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Bibliographic Details
Main Author: McManus, Colin
Other Authors: Barfoot, Timothy D.
Language:en_ca
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/1807/31339
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OTU.1807-313392013-11-02T03:43:31ZVisual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary ExplorationMcManus, Colinmobile roboticsvision systemsvisual teach and repeat0538Future missions to Mars will place heavy emphasis on scientific sample and return operations, which will require a rover to revisit sites of interest. Visual Teach and Repeat (VT&R) has proven to be an effective method to enable autonomous repeating of any previously driven route without a global positioning system. However, one of the major challenges in recognizing previously visited locations is lighting change, as this can drastically change the appearance of the scene. In an effort to achieve lighting invariance, this thesis details the design of a VT&R system that uses a laser scanner as the primary sensor. The key novelty is to apply appearance-based vision techniques traditionally used with camera systems to laser intensity images for motion estimation. Field tests were conducted in an outdoor environment over an entire diurnal cycle, covering more than 11km with an autonomy rate of 99.7% by distance.Barfoot, Timothy D.2011-112011-12-14T20:11:53ZNO_RESTRICTION2011-12-14T20:11:53Z2011-12-14Thesishttp://hdl.handle.net/1807/31339en_ca
collection NDLTD
language en_ca
sources NDLTD
topic mobile robotics
vision systems
visual teach and repeat
0538
spellingShingle mobile robotics
vision systems
visual teach and repeat
0538
McManus, Colin
Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration
description Future missions to Mars will place heavy emphasis on scientific sample and return operations, which will require a rover to revisit sites of interest. Visual Teach and Repeat (VT&R) has proven to be an effective method to enable autonomous repeating of any previously driven route without a global positioning system. However, one of the major challenges in recognizing previously visited locations is lighting change, as this can drastically change the appearance of the scene. In an effort to achieve lighting invariance, this thesis details the design of a VT&R system that uses a laser scanner as the primary sensor. The key novelty is to apply appearance-based vision techniques traditionally used with camera systems to laser intensity images for motion estimation. Field tests were conducted in an outdoor environment over an entire diurnal cycle, covering more than 11km with an autonomy rate of 99.7% by distance.
author2 Barfoot, Timothy D.
author_facet Barfoot, Timothy D.
McManus, Colin
author McManus, Colin
author_sort McManus, Colin
title Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration
title_short Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration
title_full Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration
title_fullStr Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration
title_full_unstemmed Visual Teach and Repeat Using Appearance-based Lidar - A Method For Planetary Exploration
title_sort visual teach and repeat using appearance-based lidar - a method for planetary exploration
publishDate 2011
url http://hdl.handle.net/1807/31339
work_keys_str_mv AT mcmanuscolin visualteachandrepeatusingappearancebasedlidaramethodforplanetaryexploration
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