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Segmentation and grading of diabetic retinopathic exudates using error-boost feature selection method

机译:利用误差增强特征选择方法对糖尿病性视网膜病变渗出液进行分割和分级

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This paper proposes a method to segment the exudates and lesions in retinal fundus images and classify using selective brightness feature. The exudates are segmented from background and their size is also measured. The segmentation is done by extraction of pixels which fall in the color range of the spots. The essential features inferred from the segmented image include the count of the exudates, maximum size, percentage affected, color intensity of the spot, average size and the area affected by haemorrhages. The diagnosis is supported by error-boost feature selection technique. This technique classifies the retinal images as normal or abnormal based on the features obtained from the segmented image. The abnormal images are further classified as mild, moderate or severe and there is an additional classification based on non-proliferative and severe proliferative diabetic retinopathy. The diagnosis parameter ranges for each feature are set prior to the severity classification. The error boost feature selection algorithm selects the key features which classifies the retinopathy more accurately. The obtained results seem to be clinically relevant.
机译:本文提出了一种分割眼底图像中渗出液和病变的方法,并利用选择性亮度特征进行分类。从背景中分离出渗出液,并测量其大小。通过提取落在斑点的颜色范围内的像素来完成分割。从分割图像中推断出的基本特征包括渗出液的数量,最大尺寸,受影响的百分比,斑点的颜色强度,平均尺寸和受出血影响的面积。错误增强功能选择技术支持该诊断。该技术基于从分割图像获得的特征将视网膜图像分类为正常还是异常。将异常图像进一步分类为轻度,中度或严重,并且基于非增生性和严重增生性糖尿病性视网膜病还有另外的分类。在严重性分类之前设置每个功能的诊断参数范围。误差增强特征选择算法选择可以更准确地对视网膜病变进行分类的关键特征。获得的结果似乎具有临床意义。

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