Many rodents use their whiskers to distinguish objects by surface texture. To examine possible mechanisms for this discrimination, data from an artificial whisker attached to a moving robot was used to test texture classification algorithms. This data was examined previously using a template-based classifier of the whisker vibration power spectrum [1]. Motivated by a proposal about the neural computations underlying sensory decision making [2], we classified the raw whisker signal using the related 'naive Bayes' method. The integration time window is important, with roughly 100ms of data required for good decisions and 500ms for the best decisions. For stereotyped motion, the classifier achieved hit rates of about 80% using a single (horizontal or vertical) stream of vibration data and 90% using both streams. Similar hit rates were achieved on natural data, apart from a single case in which the performance was only about 55%. Therefore this application of naive Bayes represents a biologically motivated algorithm that can perform well in a real-world robot task.
Naive Bayes texture classification applied to whisker data from a moving robot / Lepora, N. F.; Evans, M.; Fox, C. W.; Diamond, M. E.; Gurney, K.; Prescott, T. J.. - (2010), pp. 2870-2877. (Intervento presentato al convegno The 2010 International Joint Conference on Neural Networks (IJCNN) tenutosi a Barcelona, Spain nel 18-23 july 2010) [10.1109/IJCNN.2010.5596360].
Naive Bayes texture classification applied to whisker data from a moving robot
Diamond, M. E.;
2010-01-01
Abstract
Many rodents use their whiskers to distinguish objects by surface texture. To examine possible mechanisms for this discrimination, data from an artificial whisker attached to a moving robot was used to test texture classification algorithms. This data was examined previously using a template-based classifier of the whisker vibration power spectrum [1]. Motivated by a proposal about the neural computations underlying sensory decision making [2], we classified the raw whisker signal using the related 'naive Bayes' method. The integration time window is important, with roughly 100ms of data required for good decisions and 500ms for the best decisions. For stereotyped motion, the classifier achieved hit rates of about 80% using a single (horizontal or vertical) stream of vibration data and 90% using both streams. Similar hit rates were achieved on natural data, apart from a single case in which the performance was only about 55%. Therefore this application of naive Bayes represents a biologically motivated algorithm that can perform well in a real-world robot task.File | Dimensione | Formato | |
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Lepora et al. (2010) IEEE Computational Intelligence.pdf
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