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Comparative Exudate Classification Using Support Vector Machines and Neural Networks

机译:使用支持向量机和神经网络的比较渗出物分类

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After segmenting candidate exudates regions in colour retinal images we present and compare two methods for their classification. The Neural Network based approach performs marginally better than the Support Vector Machine based approach, but we show that the latter are more flexible given criteria such as control of sensitivity and specificity rates. We present classification results for different learning algorithms for the Neural Net and use both hard and soft margins for the Support Vector Machines. We also present ROC curves to examine the trade-off between the sensitivity and specificity of the classifiers.
机译:在分割候选人后,我们存在的彩色视网膜图像中的区域并比较两种方法进行分类。基于神经网络的方法比基于支持向量机的方法更好地表现出略微好转,但我们表明后者更灵活地给定标准,例如灵敏度和特定率的控制。我们为神经网络提供不同学习算法的分类结果,并使用支持向量机的硬质和软边缘。我们还提出了ROC曲线来检查分类器的敏感性和特异性之间的权衡。

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