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Image Segmentation using Active Contours without Edges
Antoniya Mihaylova
Faculty of Telecommunications at Technical University of Sofia, 8 Kl. Ohridski Blvd, Sofia 1000 & Bulgaria
Abstract: Medical images studies that analyse the images help to detect the diseases that are difficult tasks and time consuming. We in this work introduced a model for segmenting the abdominal organs and help to find pathological effect. We have deployed a segmentation method called as Active contours without edges that has not considered the edges for detection. This model enables the quick results and helped to extract the organs. The image segmentation helps to measure the pathology of the affected organs.
Keywords: Fast Segmentation of Spleen in MRI with Pathology, Tumour Segmentation Image Segmentation using Active Contours without Edges
DOI:https://doi.org/10.6025/jmpt/2021/12/2/50-56
Full_Text   PDF 3.34 MB   Download:   236  times
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