Image segmentation method is widely used as a pre-process in the image process, and exerts a significant effect in analyzing the image. Medical, semiconductor research, intelligent transportation systems, robotics, military, and the like used in various fields, and the trend in the field can be developed and applied as the performance of the algorithm in accordance with the recent development of hardware that are still growing. Image segmentation is required to have a high accuracy as used for pre-processing in other applications. When the boundary between the background and a object is unclear, it causes a problem in the post-processing. In this thesis, we propose a method in order to divide the background and objects using filtered super-pixel and enhanced saliency map. Comparing the size of the area evenly and smoothed to produce a super pixel and super pixel region removes not equal area. By applying a bilateral filter to the saliency map, it is similar to the human vision system to improve the segmentation of the background and the object is to be applied makes it possible to adaptively without utilizing a number of conditions or pre-information or knowledge not the algorithm tailored to a specific environment.