论文标题
CNN-LSTM组合网络,用于使用眼睛眼睛图像的白内障检测
A CNN-LSTM Combination Network for Cataract Detection using Eye Fundus Images
论文作者
论文摘要
根据包括世界卫生组织在内的多个权威机构的说法,与视觉相关的障碍和疾病正在成为一个重大问题。根据最近的一份报告,在50岁以上的患者中不可逆失明的主要原因之一是白内障治疗延迟。白内障是眼镜镜头中的阴云密布,会导致视觉丧失。白内障经常发育缓慢,因此导致驾驶,阅读甚至识别面孔的困难。这需要开发针对眼部疾病的快速且可靠的诊断和治疗解决方案。以前,此类视觉疾病诊断是手动进行的,这很耗时,容易出现人类错误。但是,随着技术的进步,现在可以访问在产生值得信赖的结果同时减少时间和人工的基于计算机的方法。在这项研究中,我们开发了一种基于CNN-LSTM的模型结构,其目的是创建一个低成本的诊断系统,该系统可以从眼底图像中对眼部疾病的正常和白内障病例进行分类。提出的模型接受了公开可用的ODIR数据集的培训,其中包括患者左眼和右眼的眼镜图像。建议的架构优于先前的系统,其精度为97.53%。
According to multiple authoritative authorities, including the World Health Organization, vision-related impairments and disorders are becoming a significant issue. According to a recent report, one of the leading causes of irreversible blindness in persons over the age of 50 is delayed cataract treatment. A cataract is a cloudy spot in the eye's lens that causes visual loss. Cataracts often develop slowly and consequently result in difficulty in driving, reading, and even recognizing faces. This necessitates the development of rapid and dependable diagnosis and treatment solutions for ocular illnesses. Previously, such visual illness diagnosis were done manually, which was time-consuming and prone to human mistake. However, as technology advances, automated, computer-based methods that decrease both time and human labor while producing trustworthy results are now accessible. In this study, we developed a CNN-LSTM-based model architecture with the goal of creating a low-cost diagnostic system that can classify normal and cataractous cases of ocular disease from fundus images. The proposed model was trained on the publicly available ODIR dataset, which included fundus images of patients' left and right eyes. The suggested architecture outperformed previous systems with a state-of-the-art 97.53% accuracy.