基于学习的分层血管分割模型

R. Socher, Adrian Barbu, D. Comaniciu
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引用次数: 22

摘要

本文提出了一种基于学习的血管造影视频血管分割方法。血管分割是医学成像中的一项重要任务,在过去得到了广泛的研究。传统方法通常需要预处理步骤、标准条件或手动设置种子点。该方法对低辐射x射线图像中常见的噪声具有自动、快速和鲁棒性。此外,它可以很容易地训练和用于任何类型的管状结构。我们将分割任务制定为三个层次的分层学习问题:边界点,交叉段和容器块,对应于容器的位置,宽度和长度。遵循边际空间学习范式,每一层的检测由学习到的分类器执行。我们使用带有Haar和可操纵特征的概率增强树。本文介绍了在200个框架中对围绕导丝的容器进行分割的初步结果,并讨论了未来的补充内容。
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A learning based hierarchical model for vessel segmentation
In this paper we present a learning based method for vessel segmentation in angiographic videos. Vessel segmentation is an important task in medical imaging and has been investigated extensively in the past. Traditional approaches often require pre-processing steps, standard conditions or manually set seed points. Our method is automatic, fast and robust towards noise often seen in low radiation X-ray images. Furthermore, it can be easily trained and used for any kind of tubular structure. We formulate the segmentation task as a hierarchical learning problem over 3 levels: border points, cross-segments and vessel pieces, corresponding to the vessel's position, width and length. Following the marginal space learning paradigm the detection on each level is performed by a learned classifier. We use probabilistic boosting trees with Haar and steerable features. First results of segmenting the vessel which surrounds a guide wire in 200 frames are presented and future additions are discussed.
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