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Hierarchical Classifiers for Detection of Fractures in X-Ray Images

机译:用于检测X射线图像中的骨折的分层分类器

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摘要

Fracture of the bone is a very serious medical condition. In clinical practice, a tired radiologist has been found to miss fracture cases after looking through many images containing healthy bones. Computer detection of fractures can assist the doctors by flagging suspicious cases for closer examinations and thus improve the timeliness and accuracy of their diagnosis. This paper presents a new divide-and-conquer approach for fracture detection by partitioning the problem into smaller sub-problems in SVM's kernel space, and training an SVM to specialize in solving each sub-problem. As the sub-problems are easier to solve than the whole problem, a hierarchy of SVMs performs better than an individual SVM that solves the whole problem. Compared to existing methods, this approach enhances the accuracy and reliability of SVMs.
机译:骨骼骨折是一种非常严重的疾病。在临床实践中,发现疲倦的放射科医生在浏览许多包含健康骨骼的图像后会漏掉骨折病例。骨折的计算机检测可以通过标记可疑病例进行仔细检查来帮助医生,从而提高诊断的及时性和准确性。本文通过将问题划分为SVM内核空间中的较小子问题,并训练SVM专门解决每个子问题,提出了一种新的分治方法,用于裂缝检测。由于子问题比整个问题更容易解决,因此SVM的层次结构比解决整个问题的单个SVM的性能更好。与现有方法相比,此方法提高了SVM的准确性和可靠性。

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