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Statistical classifiers on local binary patterns for optical diagnosis of diabetic retinopathy

机译:统计分类机对糖尿病视网膜病变的局部二元模式

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Diabetic retinopathy damages retina due to diabetes mellitus which leads to blindness. Here, we have applied local binary pattern (LBP) in order to capture the spatial variations of the refractive indices due to progress of diabetic retinopathy among retinal tissues. After extraction of discriminative textures as binary numbers, state of art machine learning algorithms like decision tree and K-NN have been applied to get the optimum detection accuracy in multiclass classifications of in vivo diabetic retinopathy images. Here it is quite apparent that K-NN provides better accuracy and specificity than decision tree.
机译:由于糖尿病导致失明,糖尿病视网膜病变损坏视网膜。这里,我们已经应用了局部二进制模式(LBP),以捕获由于视网膜组织中糖尿病视网膜病变的进展而捕获折射率的空间变化。在提取鉴别纹理作为二进制数之后,已经应用了决策树和K-Nn等艺术机器学习算法的状态,以获得体内糖尿病视网膜病变的多级分类中的最佳检测精度。这里很明显,K-NN提供比决定树更好的准确性和特异性。

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