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Estimation and dynamic updating of time-varying signals with sparse variations

机译:具有稀疏变化的时变信号的估计和动态更新

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This paper presents an algorithm for an ℓ1-regularized Kalman filter. Given observations of a discrete-time linear dynamical system with sparse errors in the state evolution, we estimate the state sequence by solving an optimization algorithm that balances fidelity to the measurements (measured by the standard ℓ2 norm) against the sparsity of the innovations (measured using the ℓ1 norm). We also derive an efficient algorithm for updating the estimate as the system evolves. This dynamic updating algorithm uses a homotopy scheme that tracks the solution as new measurements are slowly worked into the system and old measurements are slowly removed. The effective cost of adding new measurements is a number of low-rank updates to the solution of a linear system of equations that is roughly proportional to the joint sparsity of all the innovations in the time interval of interest.
机译:本文提出了一种用于ℓ 1 正则化卡尔曼滤波器的算法。给定在状态演化中具有稀疏误差的离散时间线性动力系统的观测结果,我们通过解决使保真度与测量值保持平衡的优化算法(由标准ℓ 2 规范测量)来估计状态序列反对创新的稀疏性(使用ℓ 1 规范衡量)。我们还推导了一种有效的算法,可以随着系统的发展更新估算值。这种动态更新算法使用同伦方案,该方案跟踪解决方案,因为新的测量值将缓慢地运用于系统中,而旧的测量值则被缓慢地移除。添加新测量的有效成本是对线性方程组解决方案的许多低阶更新,这些更新与感兴趣的时间间隔内所有创新的联合稀疏度大致成比例。

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