Conference
Learning to categorize objects using temporal coherence
Abstract
The invariance of an objects' identity as it transformed over time provides a powerful cue for perceptual learning. We present an unsupervised learning procedure which maximizes the mutual information between the representations adopted by a feed-forward network at consecutive time steps. We demonstrate that the network can learn, entirely
unsupervised, to classify an ensemble of several patterns by observing pattern trajectories, even though …
Authors
Becker S
Editors
Hanson SJ; Cowan JD; Giles CL
Volume
5
Pagination
pp. 361-368
Publisher
Morgan Kaufmann Publishers
Place of publication
San Mateo, CA
Publication Date
1992
Name of conference
Neural Information Processing Systems 1992
Conference proceedings
Advances in Neural Information Processing Systems
ISSN
1049-5258