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Combination of block difference inverse probability features and support vector machine to reduce false positives in computer-aided detection for massive lesions in mammographic images

机译:块差逆概率特征的组合和支持向量机减少计算机辅助检测中的误报的误报图像中的误报

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A new false positive reduction approach in computer-aided mammographic mass detection has been proposed in this paper. The goal is to discriminate true recognized masses from the normal parenchyma ones. To describe masses, Block Difference Inverse Probability (BDIP) features are utilized. Once the descriptors are extracted, we use Support Vector Machine (SVM) to classify the detected masses. Evaluation on about 2700 suspicious regions detected from Mini-MIAS database gives the discrimination result of 0.91. It indicates that using BDIP features is effective and efficient for reducing false positives.
机译:本文提出了一种新的伪正减少方法在计算机辅助乳房X线监测体重检测中。目标是歧视来自正常的实质上的真实识别的群众。要描述群众,使用块差差概率(BDIP)功能。一旦提取描述符,我们就会使用支持向量机(SVM)来对检测到的肿块进行分类。从迷你米西数据库检测到的约2700个可疑区域的评估给出了0.91的歧视结果。它表示使用BDIP功能是有效且有效的,用于减少误报。

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