基于深度学习网络的眼底图像青光眼自动检测

R. Yugha, V. Vinodhini, J. Arunkumar, K. Varalakshmi, G. Karthikeyan, G. Ramkumar
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引用次数: 1

摘要

青光眼是一种由高眼压引起的眼部疾病,可能导致完全失明。另一方面,以青光眼筛查为基础的及时治疗可以防止患者丧失全部视力。专业人员使用精确的测试程序手动分析视网膜以确定受青光眼影响的区域。然而,由于复杂的青光眼检测方法和资源的缺乏,常常会出现检测延误,这可能会提高全球视力损害的发生率。此外,病变与眼睛颜色之间的显著相似性也使人工分类过程更加困难。因此,迫切需要开发一种有效的智能方法,能够在早期精确检测视盘和视杯病变,以解决手工方法的困难。因此,本文提出了一种基于深度学习的策略,称为高效det - do,并以高效网- b0作为其基础。青光眼定位与分类的概念方法分为三个阶段。首先,effentnet - b0特征提取器从可疑示例中计算特征表示。然后,利用从EfficientNet-B0计算出的特征,利用EfficientNet-B0的双向特征金字塔系统模块重复进行自上而下和自下而上的关键点合并操作。青光眼病变的局部区域及其伴随的分类在最后阶段进行预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automated Glaucoma Detection from Fundus Images based on Deep Learning Network
A condition known as glaucoma, is an eye illness brought on by high intraocular pressure, may lead to total blindness. On the other hand, prompt glaucoma screening-based therapy may keep the individual from losing all vision. Professionals manually analyze retina to pinpoint the areas affected by glaucoma using precise testing procedures. However, because of complicated glaucoma testing methods and a lack of resources, delays in detection are often experienced that may raise the global rate of visual impairment. Moreover, the significant resemblance between the lesion and eye color also makes the manual categorization procedure more difficult. Hence, there exists an urgent need to develop an effective smart approach that can precisely detect the Optic Disc as well as Optic Cup lesions at the early stage in order to address the difficulties of manual methods. Therefore, a Deep Learning based strategy called EfficientDet-DO with EfficientNet-B0 serving as its foundation has been proposed in this paper. There are three phases in the conceptual methodology for the localization and categorization of glaucoma. First, the EfficientNet-B0 feature extractor computes the feature representations from the suspicious examples. Next, the top-down and bottom-up key points merging operations are repeatedly carried out by the Bi-Directional Feature Pyramid system modules of EfficientDet-DO using the calculated characteristics from EfficientNet-B0. The resulting localized areas of a glaucoma lesion and its accompanying classification are anticipated in the last stage.
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