论文标题
结构抗性的恢复网络用于白内障底面图像增强
Structure-consistent Restoration Network for Cataract Fundus Image Enhancement
论文作者
论文摘要
眼底摄影是诊断和监测眼部疾病的诊所的常规检查。但是,对于白内障患者,底眼图像始终会遭受由云晶状体引起的质量降解。降解阻止了眼科医生或计算机辅助系统可靠的诊断。为了提高临床诊断的确定性,已经提出了恢复算法来提高眼底图像的质量。不幸的是,这些算法的部署仍然存在挑战,例如收集足够的培训数据和保存视网膜结构。在本文中,为了规避严格的部署要求,从共享相同结构的合成数据中开发出了与白内障底底图像的结构一致的恢复网络(SCR-NET)。白内障模拟模型首先设计为收集由白内障底面图像共享相同结构形成的合成性白内障集(SC)。然后从SCS中提取高频组件(HFC),以限制结构一致性,从而强制执行SCR-NET中的结构保存。该实验证明了SCR-NET与最先进方法和后续临床应用的有效性。该代码可从https://github.com/liamheng/arcnet-medical-image-enhancement获得。
Fundus photography is a routine examination in clinics to diagnose and monitor ocular diseases. However, for cataract patients, the fundus image always suffers quality degradation caused by the clouding lens. The degradation prevents reliable diagnosis by ophthalmologists or computer-aided systems. To improve the certainty in clinical diagnosis, restoration algorithms have been proposed to enhance the quality of fundus images. Unfortunately, challenges remain in the deployment of these algorithms, such as collecting sufficient training data and preserving retinal structures. In this paper, to circumvent the strict deployment requirement, a structure-consistent restoration network (SCR-Net) for cataract fundus images is developed from synthesized data that shares an identical structure. A cataract simulation model is firstly designed to collect synthesized cataract sets (SCS) formed by cataract fundus images sharing identical structures. Then high-frequency components (HFCs) are extracted from the SCS to constrain structure consistency such that the structure preservation in SCR-Net is enforced. The experiments demonstrate the effectiveness of SCR-Net in the comparison with state-of-the-art methods and the follow-up clinical applications. The code is available at https://github.com/liamheng/ArcNet-Medical-Image-Enhancement.