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An improved arteriovenous classification method for the early diagnostics of various diseases in retinal image.

(BACKGROUND AND OBJECTIVES): Retinal artery and vein classification is an important task for the automatic computer-aided diagnosis of various eye diseases and systemic diseases. This paper presents an improved supervised artery and vein classification method in retinal image.

(METHODS): Intra-image regularization and inter-subject normalization is applied to reduce the differences in feature space. Novel features, including first-order and second-order texture features, are utilized to capture the discriminating characteristics of arteries and veins.

(RESULTS): The proposed method was tested on the DRIVE dataset and achieved an overall accuracy of 0.923.

(CONCLUSION): This retinal artery and vein classification algorithm serves as a potentially important tool for the early diagnosis of various diseases, including diabetic retinopathy and cardiovascular diseases.

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