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SVM-Based Failure Detection of GHT Localizations

机译:基于SVM的GHT本地化故障检测

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This paper addresses the localization of anatomical structures in medical images by a Generalized Hough Transform (GHT). As localization is often a pre-requisite for subsequent model-based segmentation, it is important to assess whether or not the GHT was able to locate the desired object. The GHT by its construction does not make this distinction. We present an approach to detect incorrect GHT localizations by deriving collective features of contributing GHT model points and by training a Support Vector Machine (SVM) classifier. On a training set of 204 cases, we demonstrate that for the detection of incorrect localizations classification errors of down to 3% are achievable. This is three times less than the observed intrinsic GHT localization error.
机译:本文通过广义霍夫变换(GHT)解决了医学图像中解剖结构的定位问题。由于定位通常是后续基于模型的分割的先决条件,因此评估GHT是否能够定位所需的对象非常重要。 GHT的构造没有区别。我们提出一种方法,通过派生贡献GHT模型点的集体特征并通过训练支持向量机(SVM)分类器来检测不正确的GHT定位。在204个案例的训练集上,我们证明了对于错误定位的分类,可以实现低至3%的分类错误。这比观察到的固有GHT定位误差小三倍。

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