论文标题
带有曲率正规化的轨迹分组,用于管状结构跟踪
Trajectory Grouping with Curvature Regularization for Tubular Structure Tracking
论文作者
论文摘要
管状结构跟踪是计算机视觉和医学图像分析领域的关键任务。基于路径的最小方法在追踪管状结构方面表现出很强的能力,通过该结构可以自然地建模为使用合适的测量指标计算的最小地测地路路径。但是,现有的基于路径的最小追踪方法仍然遇到诸如快捷方式和短分支组合问题等困难,尤其是在处理涉及复杂管状树结构或背景的图像时。在本文中,我们引入了一种新的基于路径的新模型,用于与感知分组方案结合使用最小交互式管状结构中心线提取。基本上,我们考虑了规定的管状轨迹和曲率纤维化的地理路径,以寻求合适的最短路径。所提出的方法可以受益于管状结构上的局部平稳性以及使用的基于图的路径搜索方案的全局最优性。对合成图像和真实图像的实验结果证明,所提出的模型确实获得了与最新基于路径的最小管状结构追踪算法相比的表现。
Tubular structure tracking is a crucial task in the fields of computer vision and medical image analysis. The minimal paths-based approaches have exhibited their strong ability in tracing tubular structures, by which a tubular structure can be naturally modeled as a minimal geodesic path computed with a suitable geodesic metric. However, existing minimal paths-based tracing approaches still suffer from difficulties such as the shortcuts and short branches combination problems, especially when dealing with the images involving complicated tubular tree structures or background. In this paper, we introduce a new minimal paths-based model for minimally interactive tubular structure centerline extraction in conjunction with a perceptual grouping scheme. Basically, we take into account the prescribed tubular trajectories and curvature-penalized geodesic paths to seek suitable shortest paths. The proposed approach can benefit from the local smoothness prior on tubular structures and the global optimality of the used graph-based path searching scheme. Experimental results on both synthetic and real images prove that the proposed model indeed obtains outperformance comparing with the state-of-the-art minimal paths-based tubular structure tracing algorithms.