Computational single fundus image restoration techniques: a review

Shuhe Zhang, Carroll A B Webers, T. Berendschot
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Abstract

Fundus cameras are widely used by ophthalmologists for monitoring and diagnosing retinal pathologies. Unfortunately, no optical system is perfect, and the visibility of retinal images can be greatly degraded due to the presence of problematic illumination, intraocular scattering, or blurriness caused by sudden movements. To improve image quality, different retinal image restoration/enhancement techniques have been developed, which play an important role in improving the performance of various clinical and computer-assisted applications. This paper gives a comprehensive review of these restoration/enhancement techniques, discusses their underlying mathematical models, and shows how they may be effectively applied in real-life practice to increase the visual quality of retinal images for potential clinical applications including diagnosis and retinal structure recognition. All three main topics of retinal image restoration/enhancement techniques, i.e., illumination correction, dehazing, and deblurring, are addressed. Finally, some considerations about challenges and the future scope of retinal image restoration/enhancement techniques will be discussed.
计算单眼眼底图像修复技术:综述
眼底照相机被眼科医生广泛用于监测和诊断视网膜病变。遗憾的是,没有一个光学系统是完美无缺的,由于存在照明问题、眼内散射或突然移动造成的模糊,视网膜图像的可视性可能会大大降低。为了提高图像质量,人们开发了不同的视网膜图像修复/增强技术,这些技术在提高各种临床和计算机辅助应用的性能方面发挥着重要作用。本文全面回顾了这些修复/增强技术,讨论了其基本数学模型,并展示了如何在现实生活中有效应用这些技术,以提高视网膜图像的视觉质量,从而实现潜在的临床应用,包括诊断和视网膜结构识别。视网膜图像复原/增强技术的所有三个主要课题,即光照校正、去毛刺和去模糊,均有涉及。最后,还将讨论视网膜图像复原/增强技术面临的挑战和未来发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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