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A novel featureless approach to mass detection in digital mammograms based on support vector machines

机译:基于支持向量机的新型无特征数字乳腺X线摄影质量检测方法

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摘要

In this work, we present a novel approach to mass detection in digital mammograms. The great variability of the appearance of masses is the main obstacle to building a mass detection method. It is indeed demanding to characterize all the varieties of masses with a reduced set of features. Hence, in our approach we have chosen not to extract any feature, for the detection of the region of interest; in contrast, we exploit all the information available on the image. A multiresolution overcomplete wavelet representation is performed, in order to codify the image with redundancy of information. The vectors of the very-large space obtained are then provided to a first support vector machine (SVM) classifier. The detection task is considered here as a two-class pattern recognition problem: crops are classified as suspect or not, by using this SVM classifier. False candidates are eliminated with a second cascaded SVM. To further reduce the number of false positives, an ensemble of experts is applied: the final suspect regions are achieved by using a voting strategy. The sensitivity of the presented system is nearly 80% with a false-positive rate of 1.1 marks per image, estimated on images coming from the USF DDSM database.
机译:在这项工作中,我们提出了一种在数字乳房X线照片中进行质量检测的新颖方法。质量外观的巨大变化是建立质量检测方法的主要障碍。确实要求以减少的特征来表征所有群众。因此,在我们的方法中,我们选择不提取任何特征来检测感兴趣的区域。相反,我们利用图像上的所有可用信息。为了对图像进行信息冗余编码,执行了多分辨率超完备小波表示。然后将获得的非常大空间的向量提供给第一支持向量机(SVM)分类器。在这里,检测任务被视为两类模式识别问题:通过使用此SVM分类器,将农作物分类为可疑。使用第二个级联SVM消除了错误的候选对象。为了进一步减少误报的数量,应用了专家组:通过使用投票策略来实现最终可疑区域。根据来自USF DDSM数据库的图像估计,本系统的灵敏度接近80%,每幅图像的假阳性率为1.1个标记。

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