Article ID Journal Published Year Pages File Type
408800 Neurocomputing 2009 8 Pages PDF
Abstract

A novel invariant pattern recognition approach is proposed based on a special gradient-type recurrent analog associative memory. The system exhibits stable equilibrium points in predefined positions specified by feature vectors extracted from the training set, while invariance to geometrical transformations is inferred by using the tangent distance. Experimental results for handwritten character recognition and face recognition tasks indicate that the proposed approach may yield superior performances over classical solutions based on the Euclidean distance metric. Possible extensions towards modular and sequential pattern recognition are finally outlined.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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