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Particle Filtering on the Complex Stiefel Manifold with Application to Subspace Tracking

机译:复杂Stiefel流形上的粒子滤波及其在子空间跟踪中的应用

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In this paper, we extend previous particle filtering methods whose states were constrained to the (real) Stiefel manifold to the complex case. The method is then applied to a Bayesian formulation of the subspace tracking problem. To implement the proposed particle filter, we modify a previous MCMC algorithm so as to simulate from densities defined on the complex manifold. Also, to compute subspace estimates from particle approximations, we extend existing averaging methods to complex Grassmannians. As we verify via numerical simulations, the proposed method is advantageous over traditional SVD-based subspace tracking algorithms for scenarios with low signal-to-noise ratio.
机译:在本文中,我们将先前状态限制为(实际)Stiefel流形的粒子过滤方法扩展到了复杂情况。然后将该方法应用于子空间跟踪问题的贝叶斯公式。为了实现所提出的粒子滤波器,我们修改了以前的MCMC算法,以便根据定义在复杂流形上的密度进行仿真。同样,为了从粒子逼近计算子空间估计,我们将现有的平均方法扩展到复杂的Grassmannian。正如我们通过数值模拟所验证的那样,对于低信噪比的场景,所提出的方法优于传统的基于SVD的子空间跟踪算法。

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