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Classification of Cataract Fundus Image Based on Retinal Vascular Information

机译:基于视网膜血管信息的白内障眼底图像分类

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Cataract is a dulling or clouding of the lens inside the eye. Which is one of the most common diseases that might cause blindness. Considering the damage impact of cataract, we propose to use retinal vascular information for automatic cataract detection, which based on the classification of retinal image. This method focus on the preprocessing step of retinal image. Firstly, we use the maximum entropy method to enhance the contract level of fundus image. Next, in order to collect vessel information based on the Kirsh template of multi-layer filter is used. Last, adaptive weighted median filter has proposed to reduce the noise of the image. Then, according to the retinal blood vessel image, we extracted wavelet features, texture features for cataract classification. For each set of features, SVMs (support vector machines) is used for cataract classification. Finally, cataract image classified into normal, slight, medium or severe four-class. Through comparing the result of classification, three of four classes obtains the better accuracy than former. At the same time, the time that spend on feature extract is greatly reduced. The result demonstrate that our research on classification system is effective and has practical value.
机译:白内障是指眼内晶状体变钝或混浊。这是可能导致失明的最常见疾病之一。考虑到白内障的损害影响,我们建议根据视网膜图像的分类,使用视网膜血管信息进行白内障自动检测。该方法着重于视网膜图像的预处理步骤。首先,我们使用最大熵方法来提高眼底图像的收缩水平。接下来,为了基于多层过滤器的Kirsh模板收集船只信息。最后,自适应加权中值滤波器已经提出来减少图像的噪声。然后,根据视网膜血管图像,提取小波特征,纹理特征用于白内障分类。对于每组功能,都将SVM(支持向量机)用于白内障分类。最后,白内障图像分为正常,轻度,中度或重度四类。通过比较分类结果,四个类别中的三个类别获得了比以前更好的准确性。同时,大大减少了花在特征提取上的时间。结果表明,我们对分类系统的研究是有效的,具有实用价值。

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