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Classification of sonar data for a mobile robot using neural networks

D. Diep, Anne Johannet, P. Bonnefoy, Franck Harroy, Paul Loiseau

Year
2002
Citations
8

Abstract

We study an innovative architecture of an ultrasonic sensor, in conjunction with a neural network-based classification algorithm, in order to recognize some geometric obstacles encountered by a mobile robot. The ultrasonic sensor is made of the association of an array of ultrasonic transducers, building an acoustic antenna, and providing acoustic scans with a fine resolution. The neural network is a multilayer perceptron which was trained with a set of features extracted from the sonar data. Results show that, by selecting appropriate features, the network can be trained to classify some geometric shapes, like wall corners and edges.

Keywords

SonarUltrasonic sensorArtificial neural networkComputer scienceMobile robotArtificial intelligenceComputer visionMultilayer perceptronRobotData set

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