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Exploring Cascade Classifiers for Detecting Clusters of Microcalcifications

机译:探索用于检测微钙化簇的级联分类器

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The conventional approach to the detection of microcalcifications on mammographies is to employ a sliding window technique. This consists in applying a classifier function to all the subwindows contained in an image and taking each local maximum of the classifier as a possible position of a microcalcification. Although effective such an approach suffers from the high computational burden due to the huge number of subwindows contained in an image. The aim of this paper is to experimentally verify if such problem can be alleviated by a detection system which employs a cascade-based localization coupled with a clustering algorithm which exploits both the spatial coordinates of the localized regions and a confidence degree estimated on them by the final stage of the cascade. The first results obtained on a publicly available set of mammograms show that the method is promising and has large possibility of improvement.
机译:在乳腺钼靶上检测微钙化的常规方法是采用滑动窗口技术。这包括将分类器功能应用于图像中包含的所有子窗口,并将分类器的每个局部最大值作为微钙化的可能位置。尽管有效,但是由于图像中包含大量子窗口,因此这种方法遭受了高计算负担。本文的目的是通过实验验证该问题是否可以通过采用基于级联的定位和聚类算法的检测系统来缓解,该聚类算法利用了局部区域的空间坐标和由局部区域估计的置信度。级联的最后阶段。在一组可公开获得的乳房X线照片上获得的第一个结果表明,该方法是有前途的并且有很大的改进可能性。

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