Feature-based fuzzy classification for interpretation of mammograms

Abstract Methods in fuzzy logic have been applied to serve as secondary classifier for a hierarchical classification model. The use of this model in interpretation of mammograms is discussed. Also is discussed, the inevitability of using a fuzzy approach in the problem. Finally, the two different fuzzy approaches for secondary classification are compared on basis of their performance as far as clustering is concerned. The idea of using a fuzzy covariance matrix [5,6] in the distance metric of the classical c-means algorithm [1–3] has also been tried.