
The image segmentation performs a substantial role within the grassland of image process as a result of its broad vary of applications within the farming fields to find plants pests by classifying the various pests. Classification may be a technique to classify the plants pests on completely different morphological individuality. This paper presents, one in all the most effective image clump methodology, referred to as Reformulated Fuzzy c-Means with Edge and Local Information (RFELICM) introduce the weights for a component values with in local neighbor windows that improves the smart detection accuracy. The canny edge detection mechanism is employed for edge detection. Then completely different weight area unit set supported the native neighbors area unit separated by a position. The various weighted component values of native neighbor windows area unit clustered one by one, the method is perennial till the ultimate clump result’s is obtained. The RFELICM solves the matter of random distribution of pixels within the regions. Therefore the RFELICM offers a much better result than the other existing technique.