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Axis-Guided Vessel Segmentation Using a Self-Constructing Cascade-AdaBoost-SVM Classifier

机译:使用自构造Cascade-AdaBoost-SVM分类器进行轴引导的血管分割

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摘要

One major limiting factor that prevents the accurate delineation of vessel boundaries has been the presence of blurred boundaries and vessel-like structures. Overcoming this limitation is exactly what we are concerned about in this paper. We describe a very different segmentation method based on a cascade-AdaBoost-SVM classifier. This classifier works with a vessel axis + cross-section model, which constrains the classifier around the vessel. This has the potential to be both physiologically accurate and computationally effective. To further increase the segmentation accuracy, we organize the AdaBoost classifiers and the Support Vector Machine (SVM) classifiers in a cascade way. And we substitute the AdaBoost classifier with the SVM classifier under special circumstances to overcome the overfitting issue of the AdaBoost classifier. The performance of our method is evaluated on synthetic complex-structured datasets, where we obtain high overlap ratios, around 91%. We also validate the proposed method on one challenging case, segmentation of carotid arteries over real clinical datasets. The performance of our method is promising, since our method yields better results than two state-of-the-art methods on both synthetic datasets and real clinical datasets.
机译:阻碍血管边界精确描绘的一个主要限制因素是边界模糊和血管样结构的存在。克服此限制正是我们在本文中所关注的。我们描述了一种基于级联AdaBoost-SVM分类器的截然不同的分割方法。该分类器与容器轴+横截面模型一起使用,该模型约束了围绕容器的分类器。这有可能在生理上准确并且在计算上有效。为了进一步提高分割的准确性,我们以级联的方式组织了AdaBoost分类器和支持向量机(SVM)分类器。在特殊情况下,我们用SVM分类器代替AdaBoost分类器,以克服AdaBoost分类器的过拟合问题。我们的方法的性能在合成的复杂结构数据集上进行了评估,在该数据集上,我们获得了很高的重叠率,大约为91%。我们还在一个具有挑战性的案例中验证了提出的方法,即在实际临床数据集上对颈动脉进行分割。我们的方法的性能是有希望的,因为在合成数据集和实际临床数据集上,我们的方法均比两种最新方法产生更好的结果。

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