Analysis of Medical Image Segmentation Techniques
نویسندگان
چکیده
Medical images have made a great influence on medicine, diagnosis, and treatment. The most important part of image processing is image segmentation. This helps in the selection of Region of interest(ROI) of various medical images, which helps in further processing of the medical image. In this paper, first of all, Medical Image processing is discussed briefly. Then, various Start of the Art methods used for medical image segmentation have been discussed. The comparative study of various image segmentation techniques have been displayed in tabular format. Besides this, some algorithms are tested with Mammogram images and the snapshots of the results are displayed.
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تاریخ انتشار 2015