Abstract Improved distributed particle filters for tracking in a wireless sensor network
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Improved distributed particle filters for tracking in a wireless sensor network

机译:改进的分布式粒子滤波器,用于跟踪无线传感器网络

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AbstractA novel distributed particle filter algorithm is presented, called drift homotopy likelihood bridging particle filter (DHLB-PF). The DHLB-PF is designed to surmount the degeneracy problem by employing a multilevel Markov chain Monte Carlo (MCMC) procedure after the resampling step of particle filtering. DHLB-PF considers a sequence of pertinent stationary distributions which facilitates the MCMC step as well as explores the state space with a higher degree of freedom. The proposed algorithm is tested in a multi-target tracking problem using a wireless sensor network where no fusion center is required for data processing. The observations are gathered only from the informative sensors, which are sensing useful observations of the nearby moving targets. The detection of those informative sensors, which are typically a small portion of the sensor network, is taking place by using a sparsity-aware matrix decomposition technique. Simulation results showcase that the DHLB-PF outperforms current popular tracking algorithms.]]>
机译:<![cdata [ Abstract 呈现了一种新型分布式粒子滤波器算法,称为漂移同型偏置桥接粒子过滤器(DHLB-PF)。 DHLB-PF旨在通过在颗粒滤波的重采样步骤之后使用多级马尔可夫链蒙特卡罗(MCMC)程序来超越退化问题。 DHLB-PF考虑一系列相关的静止分布,促进了MCMC步骤,并探讨了具有更高程度的自由度的状态空间。使用无线传感器网络在多目标跟踪问题中测试所提出的算法,其中数据处理不需要融合中心。观察结果仅来自信息传感器,这些传感器是感知附近移动目标的有用观察。通过使用稀疏感知矩阵分解技术,正在采用通常是传感器网络的一小部分的那些信息传感器的检测。仿真结果展示了DHLB-PF优于当前流行的跟踪算法。 ]]>

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