4.6 Article

Impact of Novel Image Preprocessing Techniques on Retinal Vessel Segmentation

期刊

ELECTRONICS
卷 10, 期 18, 页码 -

出版社

MDPI
DOI: 10.3390/electronics10182297

关键词

retinal fundus image; segmentation; enhancement; morphological techniques; PCA; vessel binary image

资金

  1. AGH University of Science and Technology [16.16.120.773]

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Segmentation of retinal vessels is crucial for detecting eye diseases, but the current methods have low sensitivity in accurately segmenting low-contrast vessels. This paper proposes new preprocessing steps to extract retinal blood vessels more accurately, achieving a high sensitivity of 81% and an accuracy of around 96% on public databases. By combining traditional image processing with coherence techniques, this unsupervised method outperforms existing approaches and is suitable for automated screening for early diagnosis of eye disease.
Segmentation of retinal vessels plays a crucial role in detecting many eye diseases, and its reliable computerized implementation is becoming essential for automated retinal disease screening systems. A large number of retinal vessel segmentation algorithms are available, but these methods improve accuracy levels. Their sensitivity remains low due to the lack of proper segmentation of low contrast vessels, and this low contrast requires more attention in this segmentation process. In this paper, we have proposed new preprocessing steps for the precise extraction of retinal blood vessels. These proposed preprocessing steps are also tested on other existing algorithms to observe their impact. There are two steps to our suggested module for segmenting retinal blood vessels. The first step involves implementing and validating the preprocessing module. The second step applies these preprocessing stages to our proposed binarization steps to extract retinal blood vessels. The proposed preprocessing phase uses the traditional image-processing method to provide a much-improved segmented vessel image. Our binarization steps contained the image coherence technique for the retinal blood vessels. The proposed method gives good performance on a database accessible to the public named DRIVE and STARE. The novelty of this proposed method is that it is an unsupervised method and offers an accuracy of around 96% and sensitivity of 81% while outperforming existing approaches. Due to new tactics at each step of the proposed process, this blood vessel segmentation application is suitable for computer analysis of retinal images, such as automated screening for the early diagnosis of eye disease.

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