Automatic Detection of Diabetic Eye Disease
Keywords:
Diabetic, Perceptron, Perceptron, Segmented.Abstract
Recent technologies in diabetic user our aim at reducing unnecessary visits to medical specialists, reduse visiting time overall cost of treatment and optimizing the number of patients seen by each doctor. To detect diabetic diseased eye, here Support Vector Machine classifier is used for classification and their performance are compared. Extraction of features is performed on the segmented images of the breast. Multilayer neural perceptron network based on supervised technique of machine learning is used to classify breast thermo grams as normal, benign and perceptron.
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