國立臺灣師範大學資訊教育研究所Chen, Sei-WangChen, Chi-FarnChen, Meng-SengCherng, ShenFang, Chiung-YaoChang, Kuo-En2014-10-302014-10-301997-11-011053-587Xhttp://rportal.lib.ntnu.edu.tw/handle/20.500.12235/34325An unsupervised classification technique conceptualized in terms of neural and fuzzy disciplines for the segmentation of remotely sensed images is presented. The process consists of three major steps: 1) pattern transformation; 2) neural classification; 3) fuzzy grouping. In the first step, the multispectral patterns of image pixels are transformed into what we call coarse patterns. In the second step, a delicate classification of pixels is attained by applying an ART neural classifier to the transformed pixel patterns. Since the resultant clusters of pixels are usually too keen to be of practical significance, in the third step, a fuzzy clustering algorithm is invoked to integrate pixel clusters. A function for measuring clustering validity is defined with which the optimal number of classes can be automatically determined by the clustering algorithm. The proposed technique is applied to both synthetic and real images. High classification rates have been achieved for synthetic images. We also feel comfortable with the results of the real images because their spectral variances are even smaller than the spectral variances of the synthetic images examined.Adaptive representationART neural classifierfuzzy clustering algorithmhistogram-based nonuniform coarse codingmeasure of performanceNeural-fuzzy classification for segmentation of remotely sensed images