Lee Sang-Hoon, Kang Jiwoo, Lee Sanghoon
Department of Electrical and Electronic Engineering, Yonsei University, Seoul, 120-749, Republic of Korea.
Department of Electrical and Electronic Engineering, Yonsei University, Seoul, 120-749, Republic of Korea.
Comput Methods Programs Biomed. 2017 Sep;148:99-112. doi: 10.1016/j.cmpb.2017.06.017. Epub 2017 Jun 24.
A robust vessel segmentation and tracking method based on a particle-filtering framework is proposed to cope with increasing demand for a method that can detect and track vessel anomalies.
We apply the level set method to segment the vessel boundary and a particle filter to track the position and shape variations in the vessel boundary between two adjacent slices. To enhance the segmentation and tracking performances, the importance density of the particle filter is localized by estimating the translation of an object's boundary. In addition, to minimize problems related to degeneracy and sample impoverishment in the particle filter, a newly proposed weighting policy is investigated.
Compared to conventional methods, the proposed algorithm demonstrates better segmentation and tracking performances. Moreover, the stringent weighting policy we proposed demonstrates a tendency of suppressing degeneracy and sample impoverishment, and higher tracking accuracy can be obtained.
The proposed method is expected to be applied to highly valuable applications for more accurate three-dimensional vessel tracking and rendering.
为满足对能够检测和跟踪血管异常的方法日益增长的需求,提出了一种基于粒子滤波框架的强大血管分割与跟踪方法。
我们应用水平集方法分割血管边界,并使用粒子滤波器跟踪相邻两个切片之间血管边界的位置和形状变化。为提高分割和跟踪性能,通过估计物体边界的平移来定位粒子滤波器的重要性密度。此外,为最小化粒子滤波器中与退化和样本贫化相关的问题,研究了一种新提出的加权策略。
与传统方法相比,所提算法展现出更好的分割和跟踪性能。此外,我们提出的严格加权策略显示出抑制退化和样本贫化的趋势,并且能够获得更高的跟踪精度。
预计所提方法将应用于更准确的三维血管跟踪和渲染等具有高度价值的应用中。