Structure-preserving Guided Retinal Image Filtering and Its Application for Optic Disc Analysis
Jun Cheng, Zhengguo Li, Zaiwang Gu, Huazhu Fu, Damon Wing Kee Wong,, Jiang Liu

TL;DR
This paper introduces a novel structure-preserving guided retinal image filtering method that enhances image quality by modeling degradation as lens attenuation and scattering, thereby improving subsequent diagnostic tasks.
Contribution
The paper proposes a new retinal image filtering technique based on an attenuation and scattering model, improving image contrast and aiding in more accurate ocular disease analysis.
Findings
Enhanced retinal image contrast and clarity.
Improved accuracy in optic cup segmentation.
Better cup-to-disc ratio measurements.
Abstract
Retinal fundus photographs have been used in the diagnosis of many ocular diseases such as glaucoma, pathological myopia, age-related macular degeneration and diabetic retinopathy. With the development of computer science, computer aided diagnosis has been developed to process and analyse the retinal images automatically. One of the challenges in the analysis is that the quality of the retinal image is often degraded. For example, a cataract in human lens will attenuate the retinal image, just as a cloudy camera lens which reduces the quality of a photograph. It often obscures the details in the retinal images and posts challenges in retinal image processing and analysing tasks. In this paper, we approximate the degradation of the retinal images as a combination of human-lens attenuation and scattering. A novel structure-preserving guided retinal image filtering (SGRIF) is then proposed…
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