The International Arab Journal of Information Technology (IAJIT)

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Automated Retinal Vessel Segmentation using

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After highlighting vessel like structure by an appr opriate filter in Matched Filter (MF) technique, th resholding strategy is needed for the automated detection of b lood vessels in retinal images. For the purpose, we propose to use a new technique of entropic thresholding based on Gray Le vel Spatial Correlation (GLSC) histogram which take s into account the image local property. Results obtained show robustn ess and high accuracy detection of retinal vessel tree. An appropriate technique of thresholding allows significant improv ement of the retinal vessel detection method.


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