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Dirichlet-process-mixture-based Bayesian nonparametric method for Markov switching process estimation

机译:基于狄利克雷过程混合的贝叶斯非参数马尔可夫切换过程估计

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Dirichlet process (DP) mixtures were recently introduced to deal with switching linear dynamical models (SLDM). They assume the system can switch between an a priori infinite number of state-space representations (SSR) whose parameters are on-line inferred. The estimation problem can thus be of high dimension when the SSR matrices are unknown. Nevertheless, in many applications, the SSRs can be categorized in different classes. In each class, the SSRs are characterized by a known functional form but differ by a reduced set of unknown hyperparameters. To use this information, we thus propose a new hierarchical model for the SLDM wherein a discrete variable indicates the SSR class. Conditionally to this class, the distributions of the hyperparameters are modeled by DPs. The estimation problem is solved by using a Rao-Blackwellized particle filter. Simulation results show that our model outperforms existing methods in the field of target tracking.
机译:最近引入了Dirichlet过程(DP)混合物来处理切换线性动力学模型(SLDM)。他们假定系统可以在先验无限数量的状态空间表示形式(SSR)之间进行切换,这些状态空间表示形式的参数是在线推断的。因此,当SSR矩阵未知时,估计问题可能具有高维性。然而,在许多应用中,SSR可以分为不同的类别。在每个类别中,SSR的特征是已知的功能形式,但区别在于减少的一组未知超参数。为了使用此信息,我们因此为SLDM提出了一个新的分层模型,其中离散变量指示SSR类。对于此类,有条件的是,超参数的分布由DP建模。通过使用Rao-Blackwellized粒子滤波器解决了估计问题。仿真结果表明,我们的模型优于目标跟踪领域中的现有方法。

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