Training a terrain traversability classifier for a planetary rover through simulation

A classifier training methodology is presented for Kapvik, a micro-rover prototype. A simulated light detection and ranging scan is divided into a grid, with each cell having a variety of characteristics (such as number of points, point variance and mean height) which act as inputs to classification...

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Main Authors: Robert A Hewitt, Alex Ellery, Anton de Ruiter
Format: Article
Language:English
Published: SAGE Publishing 2017-10-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881417735401
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spelling doaj-2b95b74aa9584492b55cd51c2d80d6ab2020-11-25T03:19:21ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142017-10-011410.1177/1729881417735401Training a terrain traversability classifier for a planetary rover through simulationRobert A Hewitt0Alex Ellery1Anton de Ruiter2 Mining Systems Laboratory, Queen’s University, Kingston, ON, Canada Carleton University, Ottawa, ON, Canada Ryerson University, Toronto, ON, CanadaA classifier training methodology is presented for Kapvik, a micro-rover prototype. A simulated light detection and ranging scan is divided into a grid, with each cell having a variety of characteristics (such as number of points, point variance and mean height) which act as inputs to classification algorithms. The training step avoids the need for time-consuming and error-prone manual classification through the use of a simulation that provides training inputs and target outputs. This simulation generates various terrains that could be encountered by a planetary rover, including untraversable ones, in a random fashion. A sensor model for a three-dimensional light detection and ranging is used with ray tracing to generate realistic noisy three-dimensional point clouds where all points that belong to untraversable terrain are labelled explicitly. A neural network classifier and its training algorithm are presented, and the results of its output as well as other popular classifiers show high accuracy on test data sets after training. The network is then tested on outdoor data to confirm it can accurately classify real-world light detection and ranging data. The results show the network is able to identify terrain correctly, falsely classifying just 4.74% of untraversable terrain.https://doi.org/10.1177/1729881417735401
collection DOAJ
language English
format Article
sources DOAJ
author Robert A Hewitt
Alex Ellery
Anton de Ruiter
spellingShingle Robert A Hewitt
Alex Ellery
Anton de Ruiter
Training a terrain traversability classifier for a planetary rover through simulation
International Journal of Advanced Robotic Systems
author_facet Robert A Hewitt
Alex Ellery
Anton de Ruiter
author_sort Robert A Hewitt
title Training a terrain traversability classifier for a planetary rover through simulation
title_short Training a terrain traversability classifier for a planetary rover through simulation
title_full Training a terrain traversability classifier for a planetary rover through simulation
title_fullStr Training a terrain traversability classifier for a planetary rover through simulation
title_full_unstemmed Training a terrain traversability classifier for a planetary rover through simulation
title_sort training a terrain traversability classifier for a planetary rover through simulation
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2017-10-01
description A classifier training methodology is presented for Kapvik, a micro-rover prototype. A simulated light detection and ranging scan is divided into a grid, with each cell having a variety of characteristics (such as number of points, point variance and mean height) which act as inputs to classification algorithms. The training step avoids the need for time-consuming and error-prone manual classification through the use of a simulation that provides training inputs and target outputs. This simulation generates various terrains that could be encountered by a planetary rover, including untraversable ones, in a random fashion. A sensor model for a three-dimensional light detection and ranging is used with ray tracing to generate realistic noisy three-dimensional point clouds where all points that belong to untraversable terrain are labelled explicitly. A neural network classifier and its training algorithm are presented, and the results of its output as well as other popular classifiers show high accuracy on test data sets after training. The network is then tested on outdoor data to confirm it can accurately classify real-world light detection and ranging data. The results show the network is able to identify terrain correctly, falsely classifying just 4.74% of untraversable terrain.
url https://doi.org/10.1177/1729881417735401
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AT alexellery trainingaterraintraversabilityclassifierforaplanetaryroverthroughsimulation
AT antonderuiter trainingaterraintraversabilityclassifierforaplanetaryroverthroughsimulation
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