Butala Mark D, Frazin Richard A, Chen Yuguo, Kamalabadi Farzad
University of Illinois at Urbana-Champaign, Urbana, IL 61801 USA.
IEEE Trans Image Process. 2009 Jul;18(7):1573-87. doi: 10.1109/TIP.2009.2017996. Epub 2009 May 12.
We address the image formation of a dynamic object from projections by formulating it as a state estimation problem. The problem is solved with the ensemble Kalman filter (EnKF), a Monte Carlo algorithm that is computationally tractable when the state dimension is large. In this paper, we first rigorously address the convergence of the EnKF. Then, the effectiveness of the EnKF is demonstrated in a numerical experiment where a highly variable object is reconstructed from its projections, an imaging modality not yet explored with the EnKF. The results show that the EnKF can yield estimates of almost equal quality as the optimal Kalman filter but at a fraction of the computational effort. Further experiments explore the rate of convergence of the EnKF, its performance relative to an idealized particle filter, and implications of modeling the system dynamics as a random walk.
我们通过将动态物体的投影图像形成问题表述为一个状态估计问题来进行研究。该问题使用集合卡尔曼滤波器(EnKF)来解决,这是一种蒙特卡罗算法,当状态维度较大时在计算上易于处理。在本文中,我们首先严格研究了EnKF的收敛性。然后,在一个数值实验中证明了EnKF的有效性,在该实验中从其投影重建一个高度可变的物体,这是一种尚未用EnKF探索过的成像方式。结果表明,EnKF可以产生与最优卡尔曼滤波器几乎相同质量的估计,但计算量仅为其一小部分。进一步的实验探讨了EnKF的收敛速度、其相对于理想化粒子滤波器的性能,以及将系统动力学建模为随机游走的影响。