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Classification of Voting Patterns to Improve the Generalized Hough Transform for Epiphyses Localization

机译:投票模式的分类,以改进骨H定位的广义霍夫变换

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This paper presents a general framework for object localization in medical (and non-medical) images. In particular, we focus on objects of well-defined shape, like epiphyseal regions in hand-radiographs, which are localized based on a voting framework using the Generalized Hough Transform (GHT). We suggest to combine the GHT voting with a classifier which rates the voting characteristics of the GHT model at individual Hough cells. Specifically, a Random Forest Classifier rates whether the model points, voting for an object position, constitute a regular shape or not, and this measure is combined with the GHT votes. With this technique, we achieve a success rate of 99.4% for localizing 12 epiphyseal regions of interest in 412 hand- radiographs. The mean error is 6.6 pixels on images with a mean resolution of 1185 × 2006 pixels. Furthermore, we analyze the influence of the radius of the local neighborhood which is considered in analyzing the voting characteristics of a Hough cell.
机译:本文提出了医学(和非医学)图像中对象定位的通用框架。尤其是,我们专注于形状明确的对象,例如放射线照相术中的epi骨区域,这些对象使用通用霍夫变换(GHT)基于投票框架进行了本地化。我们建议将GHT投票与分类器结合起来,该分类器对单个Hough小区中GHT模型的投票特征进行评分。具体而言,随机森林分类器对模型点(对对象位置的投票)是否构成规则形状进行评估,并将此度量与GHT投票结合在一起。通过这种技术,我们在412幅手部X光片中定位了12个骨epi感兴趣区域,成功率达到了99.4%。在平均分辨率为1185×2006像素的图像上,平均误差为6.6像素。此外,我们分析了在分析霍夫小区的投票特征时考虑的局部邻域半径的​​影响。

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