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Combining particle MCMC with Rao-Blackwellized Monte Carlo data association for parameter estimation in multiple target tracking

机译:将粒子MCMC与Rao-Blackwellized蒙特卡洛数据关联相结合以进行多目标跟踪中的参数估计

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摘要

We consider state and parameter estimation in multiple target tracking problems with data association uncertainties and unknown number of targets. We show how the problem can be recast into a conditionally linear Gaussian state-space model with unknown parameters and present an algorithm for computationally efficient inference on the resulting model. The proposed algorithm is based on combining the Rao-Blackwellized Monte Carlo data association algorithm with particle Markov chain Monte Carlo algorithms to jointly estimate both parameters and data associations. Both particle marginal Metropolis-Hastings and particle Gibbs variants of particle MCMC are considered. We demonstrate the performance of the method both using simulated data and in a real-data case study of using multiple target tracking to estimate the brown bear population in Finland. (C) 2015 Elsevier Inc. All rights reserved.
机译:我们在具有数据关联不确定性和目标数量未知的多个目标跟踪问题中考虑状态和参数估计。我们展示了如何将问题重铸成带有未知参数的条件线性高斯状态空间模型,并提出了一种对所得模型进行计算有效推断的算法。所提出的算法是基于结合Rao-Blackwellized蒙特卡洛数据关联算法和粒子马尔可夫链蒙特卡洛算法,共同估计参数和数据关联。粒子MCMC的粒子边缘Metropolis-Hastings和粒子Gibbs变体均被考虑。我们使用模拟数据和使用多目标跟踪估算芬兰棕熊种群的实际数据案例研究,证明了该方法的性能。 (C)2015 Elsevier Inc.保留所有权利。

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