首页> 外文会议>MICCAI 2011;International conference on medical image computing and computer-assisted intervention >Sliding Window and Regression Based Cup Detection in Digital Fundus Images for Glaucoma Diagnosis
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Sliding Window and Regression Based Cup Detection in Digital Fundus Images for Glaucoma Diagnosis

机译:基于眼底滑动和回归的杯状眼底图像检测对青光眼的诊断

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We propose a machine learning framework based on sliding windows for glaucoma diagnosis. In digital fundus photographs, our method automatically localizes the optic cup, which is the primary structural image cue for clinically identifying glaucoma. This localization uses a bundle of sliding windows of different sizes to obtain cup candidates in each disc image, then extracts from each sliding window a new histogram based feature that is learned using a group spar-sity constraint. An ∈-SVR (support vector regression) model based on non-linear radial basis function (RBF) kernels is used to rank each candidate, and final decisions are made with a non-maximal suppression (NMS) method. Tested on the large ORIGA~(-light) clinical dataset, the proposed method achieves a 73.2% overlap ratio with manually-labeled ground-truth and a 0.091 absolute cup-to-disc ratio (CDR) error, a simple yet widely used diagnostic measure. The high accuracy of this framework on images from low-cost and widespread digital fundus cameras indicates much promise for developing practical automated/assisted glaucoma diagnosis systems.
机译:我们提出了一种基于滑动窗口的青光眼诊断机器学习框架。在数字眼底照片中,我们的方法会自动定位视杯,这是临床上识别青光眼的主要结构图像提示。此定位使用一束不同大小的滑动窗口来获取每个光盘图像中的候选杯子,然后从每个滑动窗口中提取一个新的基于直方图的特征,该特征是使用组稀疏约束来学习的。使用基于非线性径向基函数(RBF)核的ε-SVR(支持向量回归)模型对每个候选者进行排名,并使用非最大抑制(NMS)方法做出最终决策。该方法在大型ORIGA〜(-light)临床数据集上进行了测试,实现了73.2%的重叠率和手动标记的地面真相,以及0.091的绝对杯碟比(CDR)误差,这是一种简单而广泛使用的诊断方法措施。该框架对来自低成本和广泛使用的数字眼底照相机的图像的高精度指示了开发实用的自动化/辅助性青光眼诊断系统的广阔前景。

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