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Automatic classification of images of an angiography sequence using modified shape context-based spatial pyramid kernels

机译:使用修改形状的基于环境的空间金字塔内核自动分类血管造影序列的图像

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Coronary angiography is routinely used to screen patients both prior to and during angioplasty. Each angiography study results in a collection of video sequences or “runs” that depict coronary arteries from different viewpoints. A key problem to be addressed in the automatic interpretation of coronary angiography videos is the identification of images depicting coronary arteries in these sequences. In this paper we present a classification approach to distinguish between the coronary arteries and background images using the shape context descriptor and the learning framework of spatial pyramid kernels. Specifically, we extract centerlines of coronary arteries and represent their intensity distributions and layouts using a Mercer kernel formed from the histograms of intensity and shape context. A multi-class support vector machine is then used to classify a new image depicting coronary arteries. Experimental results are presented that show a high degree of accuracy in artery classification using our approach even under variation in appearance due to viewpoint, coronary anatomy differences, disease-specific variations and changes in imaging conditions.
机译:冠状动脉造影常规用于血管成形术之前和血管成形术之前筛选患者。每个血管造影研究都在研究视频序列或“ runs”从不同的观点来看,描绘了冠状动脉。在冠状动脉造影视频的自动解释中要解决的关键问题是识别描绘这些序列中的冠状动脉的图像。在本文中,我们介绍了一种分类方法,以利用形状上下文描述符和空间金字塔内核的学习框架区分冠状动脉和背景图像。具体地,我们利用由强度和形状上下文的直方图形成的Mercer内核来提取冠状动脉的中心线,并表示它们的强度分布和布局。然后使用多级支持向量机来分类描述冠状动脉的新图像。提出了实验结果,其在由于观点,冠状动脉解剖学差异,疾病特异性变化和成像条件的变化,即使在外观的变化下,使用我们的方法在动脉分类中显示出高精度。

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