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Semi-automated System for Cup to Disc Measurement for Diagnosing Glaucoma Using Classification Paradigm

机译:用于使用分类范式诊断青光眼的半自动系统,用于诊断青光眼

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Recently, Glaucoma has become one of the major retinal diseases. In order to detect such retinal diseases, cup to disc ratio measurement is a vital index of Glaucoma, as the Glaucomatous neuropathy increases the cup to disc ratio when the excavation of the optic cup is increased. In this paper, a semi-automated system to detect both of optic cup and optic disc and to measure cup to disc ratio has been proposed. The proposed system firstly, uses an object detection function from red channel of the retinal images. Then further using threshold values, the optic cup and optic disc are detected. Although, for several images manual tuning is needed as the object detection function as well as the threshold value fail to detect the optic cup and optic disc correctly. The manually tuned images and the automatically detected images are further used to determine the error in the system which leads to the categorizing of the images. These images are later post-processed using Haralick texture features. Haralick texture features' obtained values are trained using back propagation neural network to determine the system's accuracy. The proposed system was evaluated using RIM-ONE database. By increasing the absolute error, system's accuracy is evaluated. The proposed system's accuracy is 86.43 % at 0.5 error value.
机译:最近,青光眼已成为主要的视网膜疾病之一。为了检测这种视网膜疾病,杯子与盘比测量是青光眼的重要指标,因为青光眼神经病变增加到光学杯的挖掘时与盘的比率增加。在本文中,已经提出了一种用于检测光学杯和光盘的半自动系统并测量到盘比的杯子。所提出的系统首先,使用来自视网膜图像的红色通道的物体检测功能。然后,进一步使用阈值,检测光学杯和光盘。虽然,对于几个图像,需要手动调谐作为对象检测功能以及阈值无法正确检测光学杯和光盘。手动调谐图像和自动检测的图像还用于确定系统中的错误,这导致图像的分类。这些图像稍后使用Haralick纹理功能后处理。 Haralick纹理特征获得的值使用后传播神经网络训练,以确定系统的准确性。使用RIM-ONE数据库进行评估所提出的系统。通过增加绝对误差,评估系统的准确性。所提出的系统的准确性为0.5误差值为86.43%。

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