Electrical Engineering Department, Sharif University of Technology, Tehran, Iran.
Comput Biol Med. 2010 Jan;40(1):21-8. doi: 10.1016/j.compbiomed.2009.10.004. Epub 2009 Nov 14.
In this paper a variational framework for joint segmentation and motion estimation is employed for inspecting heart in Cine MRI sequences. A functional including Mumford-Shah segmentation and optical flow based dense motion estimation is approximated using the phase-field technique. The minimizer of the functional provides an optimum motion field and edge set by considering both spatial and temporal discontinuities. Exploiting calculus of variation principles, multiple partial differential equations associated with the Euler-Lagrange equations of the functional are extracted, first. Next, the finite element method is used to discretize the resulting PDEs for numerical solution. Several simulation runs are used to test the convergence and the parameter sensitivity of the method. It is further applied to a comprehensive set of clinical data in order to compare with conventional cascade methods. Developmental constraints are identified as memory usage and computational complexities, which may be resolved utilizing sparse matrix manipulations and similar techniques. Based on the results of this study, joint segmentation and motion estimation outperforms previously reported cascade approaches especially in segmentation. Experimental results substantiated that the proposed method extracts the motion field and the edge set more precisely in comparison with conventional cascade approaches. This superior result is the consequence of simultaneously considering the discontinuity in both motion field and image space and including consequent frames (usually five) in our joint process functional.
本文采用变分框架进行联合分割和运动估计,用于检查 Cine MRI 序列中的心脏。通过相位场技术近似包含 Mumford-Shah 分割和基于光流的密集运动估计的函数。通过同时考虑空间和时间不连续性,该函数的极小值提供了最佳的运动场和边缘集。利用变分原理,首先提取与函数的欧拉-拉格朗日方程相关的多个偏微分方程。接下来,使用有限元方法对得到的偏微分方程进行离散化以进行数值求解。进行了多次模拟运行以测试方法的收敛性和参数敏感性。然后将其应用于一组全面的临床数据,以便与传统的级联方法进行比较。发展约束被确定为内存使用和计算复杂性,这可以通过稀疏矩阵操作和类似的技术来解决。基于这项研究的结果,联合分割和运动估计优于以前报道的级联方法,特别是在分割方面。实验结果证实,与传统的级联方法相比,该方法更精确地提取了运动场和边缘集。这一优越的结果是由于在我们的联合处理函数中同时考虑了运动场和图像空间中的不连续性,并包含了后续的几个帧(通常为五个)。