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Learning-Based Visual Saliency Model for Detecting Diabetic Macular Edema in Retinal Image

机译:基于学习的视觉显着性模型在视网膜图像中检测糖尿病性黄斑水肿

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摘要

This paper brings forth a learning-based visual saliency model method for detecting diagnostic diabetic macular edema (DME) regions of interest (RoIs) in retinal image. The method introduces the cognitive process of visual selection of relevant regions that arises during an ophthalmologist's image examination. To record the process, we collected eye-tracking data of 10 ophthalmologists on 100 images and used this database as training and testing examples. Based on analysis, two properties (Feature Property and Position Property) can be derived and combined by a simple intersection operation to obtain a saliency map. The Feature Property is implemented by support vector machine (SVM) technique using the diagnosis as supervisor; Position Property is implemented by statistical analysis of training samples. This technique is able to learn the preferences of ophthalmologist visual behavior while simultaneously considering feature uniqueness. The method was evaluated using three popular saliency model evaluation scores (AUC, EMD, and SS) and three quality measurements (classical sensitivity, specificity, and Youden's J statistic). The proposed method outperforms 8 state-of-the-art saliency models and 3 salient region detection approaches devised for natural images. Furthermore, our model successfully detects the DME RoIs in retinal image without sophisticated image processing such as region segmentation.
机译:本文提出了一种基于学习的视觉显着性模型方法,用于检测视网膜图像中诊断出的糖尿病性黄斑水肿(DME)感兴趣区域(RoIs)。该方法引入了在眼科医生的图像检查期间出现的相关区域的视觉选择的认知过程。为了记录该过程,我们在100张图像上收集了10位眼科医生的眼动数据,并将该数据库用作培训和测试示例。基于分析,可以通过简单的交集操作导出并组合两个属性(功能属性和位置属性),以获得显着性图。特征属性是通过使用诊断为主管的支持向量机(SVM)技术实现的;位置属性是通过对训练样本进行统计分析来实现的。该技术能够学习眼科医生的视觉行为偏好,同时考虑特征的唯一性。使用三个流行的显着性模型评估得分(AUC,EMD和SS)和三个质量度量(经典灵敏度,特异性和Youden J统计量)评估了该方法。所提出的方法优于针对自然图像设计的8种最新显着性模型和3种显着区域检测方法。此外,我们的模型无需复杂的图像处理(例如区域分割)即可成功检测出视网膜图像中的DME RoI。

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