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Automated Detection of Adenoviral Conjunctivitis Disease from Facial Images using Machine Learning

机译:使用机器学习从面部图像自动检测腺病毒性结膜炎疾病

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Nowadays scientists are focusing on diagnosing certain eye diseases using image processing. Among these diseases, Adenoviral conjunctivitis is a key eye infection to be observed and diagnosed. In this paper, digital image processing (DIP) is applied for an automated, fast and cost-effective diagnosis of conjunctivitis by physicians. In our study, we measure the vascularization and intensity of redness in pink eyes after segmenting the region of infection in corneal images to diagnose the conjunctivitis. Corneal images captured using our simple setup and processed through the proposed DIP approach successfully detects eye infections and isolates potentially contagious patients correctly 93% of the time. We were able to achieve this rate by isolating the sclera region using the automated GrabCut method that identifies the seed region from the image itself. Such adaptive isolation of region of interest overcomes challenges presented by the lightning and resolution. During this study, we evaluated the performance of known DIP methods and incorporated them in eye disease diagnosis.
机译:如今,科学家致力于使用图像处理诊断某些眼部疾病。在这些疾病中,腺病毒结膜炎是要观察和诊断的关键眼部感染。本文将数字图像处理(DIP)技术用于医师对结膜炎的自动,快速且经济高效的诊断。在我们的研究中,在对角膜图像中的感染区域进行分割以诊断结膜炎之后,我们测量了粉红色眼睛的血管形成和发红程度。使用我们的简单设置捕获的角膜图像并通过建议的DIP方法处理后,即可成功检测出眼部感染,并在93%的时间内正确地隔离了具有传染性的患者。我们能够通过使用自动GrabCut方法隔离巩膜区域来实现这一速度,该方法可从图像本身识别出种子区域。感兴趣区域的这种自适应隔离克服了闪电和分辨率带来的挑战。在这项研究中,我们评估了已知DIP方法的性能,并将其结合到眼部疾病的诊断中。

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