Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures

Whereas in the past ultrasonic sensors have been largely used only to estimate the proximity of objects and the location and identification of primitive targets in a robot workspace, the development of biomimetic sonar has opened up new possibilities for their application. Broadband sonar echoes hav...

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Main Authors: Politis, Z, Probert Smith, P
Format: Journal article
Language:English
Published: Sage Sci Press 2001
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author Politis, Z
Probert Smith, P
author_facet Politis, Z
Probert Smith, P
author_sort Politis, Z
collection OXFORD
description Whereas in the past ultrasonic sensors have been largely used only to estimate the proximity of objects and the location and identification of primitive targets in a robot workspace, the development of biomimetic sonar has opened up new possibilities for their application. Broadband sonar echoes have sufficient resolution so that characteristics on reflection, especially geometry and texture, can be distinguished with only a few measurements. In this paper, we describe how a model of texture can be used to distinguish between a number of different surfaces using only a single measurement of each, showing results on a number of surfaces that might be considered typical pathways for a mobile robot, both those with periodicity in pattern and those with statistically homogeneous features. In particular, we consider textures corresponding to hard smooth floors, carpets and asphalts, and surfaces with a repeating pattern made up of tiles. Each random rough surface is modeled using an extension of the Kirchhoff approximation method describing the scattering of the acoustic wave on the surface while the periodic surfaces are modeled assuming distinctive reflections from the tile borders. The continuous transmission frequency-modulated sonar signature corresponding to each class is derived and compared with the experimental measurement. A set of features is extracted that exploits the differences between the surface models, and a hierarchical classification scheme is proposed for recognition.
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spelling oxford-uuid:27f08f28-d06f-4a44-946e-7510075b9d222022-03-26T12:09:55ZClassification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signaturesJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:27f08f28-d06f-4a44-946e-7510075b9d22EnglishSymplectic Elements at OxfordSage Sci Press2001Politis, ZProbert Smith, PWhereas in the past ultrasonic sensors have been largely used only to estimate the proximity of objects and the location and identification of primitive targets in a robot workspace, the development of biomimetic sonar has opened up new possibilities for their application. Broadband sonar echoes have sufficient resolution so that characteristics on reflection, especially geometry and texture, can be distinguished with only a few measurements. In this paper, we describe how a model of texture can be used to distinguish between a number of different surfaces using only a single measurement of each, showing results on a number of surfaces that might be considered typical pathways for a mobile robot, both those with periodicity in pattern and those with statistically homogeneous features. In particular, we consider textures corresponding to hard smooth floors, carpets and asphalts, and surfaces with a repeating pattern made up of tiles. Each random rough surface is modeled using an extension of the Kirchhoff approximation method describing the scattering of the acoustic wave on the surface while the periodic surfaces are modeled assuming distinctive reflections from the tile borders. The continuous transmission frequency-modulated sonar signature corresponding to each class is derived and compared with the experimental measurement. A set of features is extracted that exploits the differences between the surface models, and a hierarchical classification scheme is proposed for recognition.
spellingShingle Politis, Z
Probert Smith, P
Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures
title Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures
title_full Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures
title_fullStr Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures
title_full_unstemmed Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures
title_short Classification of textured surfaces for robot navigation using continuous transmission frequency-modulated sonar signatures
title_sort classification of textured surfaces for robot navigation using continuous transmission frequency modulated sonar signatures
work_keys_str_mv AT politisz classificationoftexturedsurfacesforrobotnavigationusingcontinuoustransmissionfrequencymodulatedsonarsignatures
AT probertsmithp classificationoftexturedsurfacesforrobotnavigationusingcontinuoustransmissionfrequencymodulatedsonarsignatures