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Signal estimation with low infinity-norm error by minimizing the mean p-norm error

机译:通过最小化平均值的P-NOR误差,通过低无限值误差的信号估计

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We consider the problem of estimating an input signal from noisy measurements in both parallel scalar Gaussian channels and linear mixing systems. The performance of the estimation process is quantified by the ℓ∞-norm error metric (worst case error). Our previous results have shown for independent and identically distributed (i.i.d.) Gaussian mixture input signals that, when the input signal dimension goes to infinity, the Wiener filter minimizes the ℓ∞-norm error. However, the input signal dimension is finite in practice. In this paper, we estimate the finite dimensional input signal by minimizing the mean ℓp-norm error. Numerical results show that the ℓp-norm minimizer outperforms the Wiener filter, provided that the value of p is properly chosen. Our results further suggest that the optimal value of p increases with the signal dimension, and that for i.i.d. Bernoulli-Gaussian input signals, the optimal p increases with the percentage of nonzeros.
机译:我们考虑在并行标量高斯通道和线性混合系统中估计来自噪声测量的输入信号的问题。估计过程的性能由ℓ∞常规误差度量(最坏情况错误)量化。我们以前的结果已经显示为独立和相同分布(i.i.d.)高斯混合输入信号,即当输入信号维度转到无限远时,Wiener滤波器最小化ℓ∞常数错误。但是,输入信号维度在实践中是有限的。在本文中,我们通过最小化平均值ℓP-rang误差来估计有限尺寸输入信号。数值结果表明,ℓP-rom最小化器优于维纳滤波器,条件是正确选择了P值。我们的结果进一步表明,P的最佳值随信号尺寸而增加,并且对于i.i.d。 Bernoulli-Gaussian输入信号,最佳P随着诺塞托的百分比增加。

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