A Fuzzy View on k-Means Based Signal Quantization with Application in Iris Segmentation

07/13/2011
by   Nicolaie Popescu-Bodorin, et al.
0

This paper shows that the k-means quantization of a signal can be interpreted both as a crisp indicator function and as a fuzzy membership assignment describing fuzzy clusters and fuzzy boundaries. Combined crisp and fuzzy indicator functions are defined here as natural generalizations of the ordinary crisp and fuzzy indicator functions, respectively. An application to iris segmentation is presented together with a demo program.

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