Vessel Segmentation in Retinal Images Using Multi-Scale Line Operator and K-Means Clustering
DOI:
Abstract
Detecting blood vessels is an important task in retinal image analysis. Â The task is more challenging with the presence of bright and dark lesions in retinal images. Here, a method is proposed to detect vessels in both normal and abnormal retinal fundus images based on their linear features. First, the negative impact of bright lesions is reduced by using k-means segmentation in a perceptive space. Then, a multi-scale line operator is utilized to detect vessels while ignoring most of the dark lesions, which have intensity structures different from the line-shaped vessels in retina. The proposed algorithm is tested on two publicly available STARE and DRIVE databases. The performance of the method is measured by calculating the area under the receiver operating characteristic (ROC) curve and the segmentation accuracy. The proposed method achieves 0Ù«9483 and 0Ù«9387 localization accuracy against STARE and DRIVE respectively.
Keywords
retina image; retinal vessel segmentation; linear structure; perceptive transform; k-means segmentation
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ISSN : 2228-7477