Fuzzy C means (FCM) clustering is one of well known unsupervised clustering techniques
which has been widely used in automated image segmentation However
when the classical FCM algorithm is used for image segmentation
there are also some problems
such as weak robustness of distance measure
reguire ments of setting the initial number of clusters in advance
without considering local image feature In this paper
an adaptive FCM image segmentation algorithm based on the feature divergence is proposed
which can accomplish image segmentation by importing the feature divergence vector into distance measure
incorporating the cluster validity exponent to ascertain the initial number of clusters automatically and extracting the image feature according to Laws texture measure Experimental results show that the proposed method is simple and work well for most images (especially for texture images)
and has better segmentation effect than the existing FCM image segmentation.