使用 Yolo V8 算法基于眼底图像进行眼疾分类

Muhammad Nur Ihsan Muhlashin, Arnisa Stefanie
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引用次数: 0

摘要

眼疾是一个非常严重的问题,因为它会影响人的五官之一。在很多情况下,许多人在早期阶段忽视了眼疾的影响。一般来说,检查眼疾的过程都是由医生(专家)对患者眼底图像进行人工分析,费用相当昂贵。为了克服这一问题,作者提出了一种眼病分类系统,该系统可以使用 YOLO V8 自动检测眼病。该系统可用于早期检测眼疾,以防止更严重眼疾的发生。从所建模型的测试结果来看,准确率为 92%,精确率为 91%,召回率为 92%,F1-score 为 91%。总体而言,这些结果令人满意,可用于基于眼底图像的眼病分类系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Eye Disease Classification Based On Fundus Image Using Yolo V8 Algorithm
Eye disease is a very serious problem because it affects one of the five human senses. In many cases many people ignore the impact of eye diseases in the early stages. In general, the process of examining eye diseases is carried out based on manual analysis by doctors (experts) on the fundus image of the patient's eye at a fairly expensive cost. To overcome this, the author proposes an eye disease classification system that can automatically detect eye diseases using YOLO V8. This system can be used for early detection of eye diseases to prevent the development of more serious eye diseases. From the test results of the model built, the accuracy value is 92%, precision is 91%, recall is 92%, F1-score is 91%. Overall, these results can be considered satisfactory and can be implemented for eye disease classification systems based on fundus images.
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