
The Simple K-Means Clustering Technique as an input image articulated in different color spaces with different label fields to be fused. Our paper fusion segmentation maps are combining with clustering procedure as an input features to estimate the local histogram class labels for all initial partitions. This techniques residue simple to realized, quick, a variety range of applications such as motion segmentation and detection and has been lucratively functional on the Berkeley image database. Image segmentation is a traditional inverse problem which consists of achieving a dense region-based sketch of the image scene by decomposing it into having an important effect or spatially coherent regions giving out analogous attributes. In this paper show the prospective of this approach compared to the state-of-the-art segmentation methods recently projected in the literature. Our Proposed work is done by using MATLAB and also results are proficient compared to existing work.