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Real-time closed-loop tracking of an unknown number of neural sources using probability hypothesis density particle filtering

机译:使用概率假设密度粒子过滤的实时闭环跟踪未知数量的神经源

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Probability hypothesis density (PHD) filtering, implemented using particle filters, is a Bayesian technique used to non-linearly track multiple objects. In this paper, we propose a new approach based on PHD particle filters (PHD-PF) to automatically track the number of magnetoencephalography (MEG) neural dipole sources and their unknown states. In particular, by separating the MEG measurements using independent component analysis, PHD-PF is applied in a closed-loop to first estimate the number of sources and then recover their amplitude, location and orientation. We also reduce the processing time and computational complexity by employing window-based processing and multi-channel decomposition. We simulate the overall system using synthetic data and show that the proposed algorithm has tracking performance similar to existing approaches with significantly fewer number of particles. We also map the algorithm on to a Xilinx Virtex-5 field-programmable gate array (FPGA) platform. The processing period for one iteration using 3,200 particles is only about 314 μs, which makes this implementation suitable for real-time tracking.
机译:使用粒子滤波器实现的概率假设密度(PHD)滤波是用于非线性跟踪多个对象的贝叶斯技术。在本文中,我们提出了一种基于PHD粒子滤波器(PHD-PF)的新方法,以自动跟踪磁性脑(MEG)神经偶极源及其未知状态的数量。特别地,通过使用独立分量分析分离MEG测量,PHD-PF在闭环中应用于首先估计源的数量,然后恢复其幅度,位置和方向。我们还通过采用基于窗口的处理和多通道分解来降低处理时间和计算复杂性。我们使用合成数据模拟整个系统,并显示所提出的算法具有类似于现有方法的跟踪性能,具有明显更少的粒子。我们还将算法映射到Xilinx Virtex-5现场可编程门阵列(FPGA)平台。使用3,200颗粒的一次迭代的处理周期仅为约314μs,这使得该实现适用于实时跟踪。

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