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On Low-Rank Hankel Matrix Denoising

机译:在低级汉克尔矩阵去噪

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The low-complexity assumption in linear systems can often be expressed as rank deficiency in data matrices with generalized Hankel structure. This makes it possible to denoise the data by estimating the underlying structured low-rank matrix. However, standard low-rank approximation approaches are not guaranteed to perform well in estimating the noise-free matrix. In this paper, recent results in matrix denoising by singular value shrinkage are reviewed. A novel approach is proposed to solve the low-rank Hankel matrix denoising problem by using an iterative algorithm in structured low-rank approximation modified with data-driven singular value shrinkage. It is shown numerically in both the input-output trajectory denoising and the impulse response denoising problems, that the proposed method performs the best in terms of estimating the noise-free matrix among existing algorithms of low-rank matrix approximation and denoising.
机译:线性系统中的低复杂性假设通常可以表示为具有广义的Hankel结构的数据矩阵中的排名缺陷。 这使得可以通过估计底层结构化的低秩矩阵来表示数据。 然而,标准低秩近似方法不保证在估计无噪声矩阵时表现良好。 本文综述了近期通过奇异值收缩的基质去噪的结果。 提出了一种新的方法来解决通过使用数据驱动的奇异值收缩的结构化低秩近似的迭代算法来解决低级Hankel矩阵去噪问题。 它在数值上示出了在输入 - 输出轨迹去噪和脉冲响应问题的情况下,所提出的方法在估计低秩矩阵近似和去噪的现有算法中的无噪声矩阵方面表现了最佳。

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