Retinal microaneurysms(MA) are the earliest clinical sign of
diabetic retinopathy (DR) disease. DR is diagnosed by inspecting fundus images.
Early detection of DR protects patients from losing their vision. In this paper
an automatic method for detection of MA is proposed. This system utilizes
preprocessing of retinal image to correct for non- uniform illumination and
enhance contrast in the area of interest. The detection of MAs using Local
Convergence index Features (LCF) and Hybrid kernel Support Vector Machine
(HKSVM) classifier tells the probability of being actual MAs. The intensity
based features and shape based features are extracted and combined using
ensemble classifier positives will be reduced during the classification phase.
The MA candidates are extracted and classified using HKSVM Classifier. The
proposed method has been evaluated by public databases: Retinopathy Online
Challenge (ROC) and e-optha. The efficiency and effectiveness of the method
processed has been demonstrated by experimental results and thus proving its
potential as a diagnostic tool for DR.
Please read full article - https://globalpresshub.com/index.php/BN/article/view/835
No comments:
Post a Comment