Minimax sampling with arbitrary spaces [signal sampling and reconstruction]

Q3 Arts and Humanities
Yonina C. Eldar, T. G. Dvorkind
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引用次数: 2

Abstract

We consider non-ideal sampling and reconstruction schemes in which the sampling and reconstruction spaces as well as the input signal can be arbitrary. To obtain a good reconstruction of the signal in the reconstruction space, from arbitrary samples, we suggest processing the samples prior to reconstruction with a linear transformation that is designed to minimize the worst-case squared-norm error between the reconstructed signal, and the best possible (but usually unattainable) approximation of the signal in the reconstruction space. We show both theoretically and through a simulation that if the input signal does not lie in the reconstruction space, then this method can outperform the consistent reconstruction method previously proposed for this problem.
任意空间的极大极小采样[信号采样与重构]
我们考虑非理想采样和重构方案,其中采样和重构空间以及输入信号可以是任意的。为了在重构空间中从任意样本中获得良好的信号重构,我们建议在重构之前使用线性变换处理样本,该变换旨在最小化重构信号与重构空间中信号的最佳可能(但通常无法实现)近似之间的最坏情况平方范数误差。我们从理论和仿真两方面证明,如果输入信号不位于重构空间,则该方法优于先前针对该问题提出的一致性重构方法。
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来源期刊
Giornale di Storia Costituzionale
Giornale di Storia Costituzionale Arts and Humanities-History
CiteScore
0.20
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