Abstract: As of late, picture preparing is one among quickly developing innovation, rising as a center digging zone and a fascinating subject basically in restorative field. Determination of malady, for example, mind cist, Cancer, Diabetes and so forth is brought out through this innovation. Late studies demonstrate that around 600,000 individuals experience the ill effects of mind cist. From Magnetic reverberation pictures (MRI) , manual restriction and division of cists in mind is blunder inclined and tedious. Picture preparing is exceptionally valuable method to call attention to and remove the suspicious ranges from MRI and CT check therapeutic pictures. With this inspiration in this work, Fuzzy C Means (Potential K-implies) bunching is proposed for MRI cerebrum picture division. Prior to the division the Haralick strategy is advanced for highlight annihilation which will enhance the division exactness. A compelling classifier Support Vector Machines (SVM) is utilized to naturally identify the cist from MRI cerebrum picture. Under boisterous or terrible power standardization conditions this methodology turns out to be more vigorous and deliver better results utilizing high determination pictures. Keywords: Potential K Means, Haralic Feature, Magnetic Resonance Image, Support Vector Machine