Abstract

The exploration of retinal vessel structure is colossally important on account of numerous diseases including stroke, Diabetic Retinopathy (DR) and coronary heart diseases, which can damage the retinal vessel structure. The retinal vascular network is very hard to be extracted due to its spreading and diminishing geometry and contrast variation in an image. The proposed technique consists of unique parallel processes for denoising and extraction of blood vessels in retinal images. In the preprocessing section, an adaptive histogram equalization enhances dissimilarity between the vessels and the background and morphological top-hat filters are employed to eliminate macula and optic disc, etc. To remove local noise, the difference of images is computed from the top-hat filtered image and the high-boost filtered image. Frangi filter is applied at multi scale for the enhancement of vessels possessing diverse widths. Segmentation is performed by using improved Otsu thresholding on the high-boost filtered image and Frangi’s enhanced image, separately. In the postprocessing steps, a Vessel Location Map (VLM) is extracted by using raster to vector transformation. Postprocessing steps are employed in a novel way to reject misclassified vessel pixels. The final segmented image is obtained by using pixel-by-pixel AND operation between VLM and Frangi output image. The method has been rigorously analyzed on the STARE, DRIVE and HRF datasets.

Highlights

  • The fundamental target of retinal vessel segmentation is to investigate the existence of Diabetic Retinopathy (DR) conditions, being a noteworthy reason for visual deficiency in working age people in the United States [1]

  • Manual segmentation done by a human grader is incorporated into the assessment

  • The results of Zana and Klein [26] method were performed by Niemeijer [13]

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Summary

Introduction

The fundamental target of retinal vessel segmentation is to investigate the existence of DR conditions, being a noteworthy reason for visual deficiency in working age people in the United States [1]. The major observed signs of DR comprise hemorrhages, dilated retinal veins, cotton wool spots and hard exudates [2]. Disparities in retinal vascular features are signs of severe ailments, such as diabetes, stroke and cardiovascular diseases [3]. Retinal vascular changes are irretrievable, even restoration technique would not help the patient to have the same vision. VLM and Frangi filter based retinal vessel extraction capability as was before the disease. The timely detection of DR from a fundus camera image will protect the enduring person from having an irreversible visual deficiency

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