Medical Image Segmentation using Level Sets
نویسنده
چکیده
Segmentation is a vital aspect of medical imaging. It aids in the visualization of medical data and diagnostics of various dieses. This report presents an implementation of a level set approach for active contour image segmentation. This method is originally developed by Osher and Sethian and then applied to image segmentation by Malladi. No requirements about objects’ shape and allowance for very flexible topology change are key advantages for this method.
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