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Joint parameter and state estimation of the hemodynamic model by iterative extended Kalman smoother

机译:迭代扩展卡尔曼平滑器对血液动力学模型的联合参数和状态估计

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The joint estimation of the parameters and the states of the hemodynamic model from the blood oxygen level dependent (BOLD) signal is a challenging problem. In the functional magnetic resonance imaging (fMRI) literature, quite interestingly, many proposed algorithms work only as a filtering method. This makes the estimation of hidden states and parameters less reliable compared with the algorithms that use smoothing. In standard implementations, smoothing is performed only once. However, joint state and parameter estimation can be improved substantially by iterating smoothing schemes such as the extended Kalman smoother (IEKS). In the fMRI literature, extended Kalman filtering is thought to be less accurate than standard particle filtering (PF). We compared EKF with PF and observed that the contrary is true. We improved the EKF performance by adding smoother. By iterative scheme joint hemodynamic and parameter estimation is improved substantially. We compared IEKS performance with the square-root cubature Kalman smoother (SCKS) algorithm. We show that its accuracy for the state and the parameter estimation is better and much faster than iterative SCKS. SCKS was found to be a better estimator than the dynamic expectation maximization (DEM), EKF, local linearization filter (LLF) and PP methods. We show in this paper that IEKS is a better estimator than iterative SCKS under different process and measurement noise conditions. As a result, IEKS seems to be the best method we evaluated in all aspects. (C) 2015 Elsevier Ltd. All rights reserved.
机译:从血氧水平依赖性(BOLD)信号联合估计血液动力学模型的参数和状态是一个具有挑战性的问题。在功能磁共振成像(fMRI)文献中,非常有趣的是,许多提出的算法仅作为滤波方法起作用。与使用平滑算法相比,这使隐藏状态和参数的估计不太可靠。在标准实现中,平滑仅执行一次。但是,可以通过迭代诸如扩展卡尔曼平滑器(IEKS)的平滑方案来显着改善联合状态和参数估计。在fMRI文献中,扩展卡尔曼滤波被认为不如标准粒子滤波(PF)准确。我们将EKF与PF进行了比较,发现事实恰恰相反。通过添加更平滑的效果,我们提高了EKF性能。通过迭代方案,联合血液动力学和参数估计得到了显着改善。我们将IEKS性能与平方根库曼平滑器(SCKS)算法进行了比较。我们证明了其状态和参数估计的准确性比迭代SCKS更好,更快。发现SCKS比动态期望最大化(DEM),EKF,局部线性化滤波器(LLF)和PP方法更好。我们在本文中表明,在不同的过程和测量噪声条件下,IEKS比迭代SCKS是更好的估计器。结果,IEKS似乎是我们在所有方面评估的最佳方法。 (C)2015 Elsevier Ltd.保留所有权利。

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