Title :
A validity measure for fuzzy clustering
Author :
Xie, Xuanli Lisa ; Beni, Gerardo
Author_Institution :
Center for Robotic Syst., California Univ., Santa Barbara, CA, USA
fDate :
8/1/1991 12:00:00 AM
Abstract :
The authors present a fuzzy validity criterion based on a validity function which identifies compact and separate fuzzy c-partitions without assumptions as to the number of substructures inherent in the data. This function depends on the data set, geometric distance measure, distance between cluster centroids and more importantly on the fuzzy partition generated by any fuzzy algorithm used. The function is mathematically justified via its relationship to a well-defined hard clustering validity function, the separation index for which the condition of uniqueness has already been established. The performance of this validity function compares favorably to that of several others. The application of this validity function to color image segmentation in a computer color vision system for recognition of IC wafer defects which are otherwise impossible to detect using gray-scale image processing is discussed
Keywords :
fuzzy set theory; minimisation; pattern recognition; IC wafer defects; cluster centroids; color image segmentation; computer color vision system; fuzzy c-partitions; fuzzy clustering; fuzzy validity criterion; geometric distance measure; separation index; uniqueness; validity function; Application software; Application specific integrated circuits; Clustering algorithms; Color; Computer vision; Fuzzy sets; Image recognition; Image segmentation; Machine vision; Partitioning algorithms;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on