生物医学研究

抽象的な

Feature extraction based retinal image analysis for bright lesion classification in fundus image

Ganesh Naga Sai Prasad V, Ratna Bhargavi V, Rajesh V

In this paper a hybrid approach of fundus image classification for Diabetic Retinopathy (DR) lesions is proposed. Laplacian Eigenmaps (LE), a Nonlinear Dimensionality Reduction (NDR) technique is applied to a high dimensional Scale Invariant Feature Transform (SIFT) representation of fundus image for lesion classification. The applied NDR technique gives a low dimensional intrinsic feature vector for lesion classification in fundus images. The publicly available databases are used for demonstrating the implemented strategy. The performance of applied technique can be evaluated based on sensitivity, specificity, and accuracy using Support vector classifier. Compared to other feature vectors, the implemented LE based feature vector yielded better classification performance. The accuracy obtained is 96.6% for SIFT-LE-SVM.

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