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Automated classification of exudates from digital fundus images

机译:从数字眼底图像自动分类渗出物

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Diabetic Retinopathy and Diabetic Macular Edema are diseases that affect vision and eventually may lead to blindness. Early detection is a must to prevent the progression of the disease imploring the need for effective computer-aided diagnostic techniques. In the following research paper, a robust method has been proposed to segment hard exudates from digital, color fundus images using anisotropic diffusion and adaptive thresholding followed by a support vector machine for classification. The geometrical, shape and orientation features have been used to correctly classify the segmented objects as exudates or false pixels. The proposed technique has a high specificity and eliminates false positives correctly when applied across a wide range of images. The exudates segmented have a high degree of accuracy and no false positives are generated in case of non-diseased images. The proposed method has been tested on a total 189 images of the DIARETDB1 and MESSIDOR database and achieves an accuracy of 92.13% and 90% respectively. The proposed method can be used in the development for some computer aided technology for ocular diseases detection from fundus images.
机译:糖尿病视网膜病变和糖尿病性黄斑水肿是影响视觉的疾病,最终可能导致失明。早期检测是必须防止疾病的进展,估计有效的计算机辅助诊断技术的需求。在下面的研究论文中,已经提出了一种从数字,彩色眼底图像中逐渗出的稳健方法,使用各向异性扩散和自适应阈值,然后是用于分类的支持向量机。已经使用几何,形状和方向特征来正确将分段对象分类为渗出物或假像素。当跨各种图像施加时,所提出的技术具有高特异性,并在应用时正确消除误报。分段的渗出物具有高精度,并且在非患病的情况下不会产生误报。所提出的方法已经在DiaRetdB1和Messidor数据库的总数上进行了测试,并分别实现了92.13%和90 %的准确性。该方法可用于一些计算机辅助技术的开发,用于从眼底图像检测眼部疾病。

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