Classification of Colored Retinal Images for Diabetic Retinopathy Based On HOG Feature Selection.
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Abstract
Diabetic Retinopathy is an eye disease that affects the people suffering from diabetes.
The high sugar levels in blood leads to damaged blood vessels in eyes. Diabetic
retinopathy is one of the major causes of blindness in present day. Diabetic retinopathy
is mainly identified by red spots known as micro-anuerysms and bright lesions called
exudates. It has been seen that the early detection of diabetic retinopathy is done mainly
by identifying these exudates. Therefore an automated early detection of diabetic
retinopathy is need of the moment. Inspired by this manifestation of the exudates in the
eyes of person suffering from diabetes, a framework is proposed for the early detection
of diabetic retinopathy. In this research we consider the colored retinal images of the
eyes taken by fundus camera. The proposed system performs the feature extraction on
the retinal images after the preprocessing stage. The features are extracted by HOG
technique. Finally, the classification for normal and abnormal retinal images is done by
using well trained KNN, SVM and Random Forest. Ensemble model of the three
classifiers namely, KNN, SVM and MLP is also used for achieving a better accuracy.
This approach is evaluated on 400 colored fundus images, including two publically
available dataset. The accuracies of 89%, 87%, 95% and 93% are obtained for the
three individual classifiers and the ensemble model respectively.
Description
Master of Technology -CSA
