Study on Energy Based Methods in Medical Image Segmentation | Original Article
Segmentation is nothing but creation the part of image or any object. Pattern recognition and image analysis are the first step of image segmentation. In the computer vision field and image analysis we can done significant research topic in the segmentation of video with dynamic background. Image segmentation is most of moderator function in image processing and analysis. Medical image segmentation places a crucial role in different medical imaging application. Image segmentation is a process of partitioning a digital image into multiple segments. Segmentation makes the image into something, which are easier to analyse. Segmentation is needed in diagnosis, surgery preparation and other medical applications. Current segmentation approaches are reviewed and reveals its reward and drawback. Different segmentation methods are thresholding, region growing, clustering, artificial neural networks, deformable models, Markov random field models, deformable models, and wavelet. Using the different algorithms the current methodologies of image segmentation is reviewed so that user interaction is possible for images. In this paper, the review of image segmentation is explained by using different techniques.