“…Binarization is used to extract multiple features [16,17,20,27,30,31,39,47]. Several texture features proved to be useful a feature, including uniformity, entropy, maximum probability, inertia, inverse difference, correlation, homogeneity, dissimilarity, autocorrelation, cluster shade, cluster prominence, inverse difference normalized, sum entropy, sum average, sum of squares, sum variance, difference variance, difference entropy, information measures of correlation and maximal correlation coefficient extracted from gray level co-occurrence matrix (GLCM) [13,16,20,[30][31][32]39,47], sequential forward selection [28,31], spatial gray level dependence matrix (SGLDM) [40], genetic algorithm [32], masking approach [17,27], histogram [16,40], PCA [22,49], region growing technique [24,45], linear discriminant analysis (LDA) [15,45], filter bank method [28], box-counting method [40], contrast enhancement and calcification [34] and gray-weighted distance transformation [41] are used for feature extraction with high discrimination ability for classification.…”