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.
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