Image Recognition Systems with Permutative Coding

Ernst M. Kussul
Donald C. Wunsch, Missouri University of Science and Technology
Tatiana N. Baidyk

This document has been relocated to http://scholarsmine.mst.edu/ele_comeng_facwork/1667

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Abstract

A feature extractor and neural classifier for image recognition system are proposed. They are based on the permutative coding technique which continues our investigations on neural networks. It permits us to obtain sufficiently general description of the image to be recognized. Different types of images were used to test the proposed image recognition system. It was tested on the handwritten digit recognition problem, the face recognition problem and the shape of microobjects recognition problem. The results of testing are very promising. The error rate for the MNIST database is 0.44% and for the ORL database is 0.1%.