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Sampling Moments and Reconstructing Signals of Finite Rate of Innovation: Shannon Meets Strang–Fix

机译:有限创新速度的采样时刻和重构信号:Shannon遇到Strang–Fix

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摘要

Consider the problem of sampling signals which are not bandlimited, but still have a finite number of degrees of freedom per unit of time, such as, for example, nonuniform splines or piecewise polynomials, and call the number of degrees of freedom per unit of time the rate of innovation. Classical sampling theory does not enable a perfect reconstruction of such signals since they are not bandlimited. Recently, it was shown that, by using an adequate sampling kernel and a sampling rate greater or equal to the rate of innovation, it is possible to reconstruct such signals uniquely . These sampling schemes, however, use kernels with infinite support, and this leads to complex and potentially unstable reconstruction algorithms. In this paper, we show that many signals with a finite rate of innovation can be sampled and perfectly reconstructed using physically realizable kernels of compact support and a local reconstruction algorithm. The class of kernels that we can use is very rich and includes functions satisfying Strang–Fix conditions, exponential splines and functions with rational Fourier transform. This last class of kernels is quite general and includes, for instance, any linear electric circuit. We, thus, show with an example how to estimate a signal of finite rate of innovation at the output of an $RC$ circuit. The case of noisy measurements is also analyzed, and we present a novel algorithm that reduces the effect of noise by oversampling.
机译:考虑对信号进行采样的问题,该信号没有带宽限制,但是每单位时间仍然具有有限数量的自由度,例如非均匀样条或分段多项式,并称为每单位时间的自由度数创新率。传统的采样理论无法对此类信号进行完美的重构,因为它们没有带宽限制。最近,研究表明,通过使用适当的采样内核和大于或等于创新速率的采样速率,可以唯一地重建此类信号。然而,这些采样方案使用具有无限支持的内核,这导致复杂且潜在不稳定的重建算法。在本文中,我们表明可以使用紧凑支持的物理可实现内核和局部重建算法,对许多具有有限创新速度的信号进行采样和完美重建。我们可以使用的内核种类非常丰富,其中包括满足Strang-Fix条件的函数,指数样条和具有合理Fourier变换的函数。最后一类内核非常笼统,例如,包括任何线性电路。因此,我们用一个示例来说明如何估算$ RC $电路输出端的创新速度有限的信号。还对噪声测量的情况进行了分析,我们提出了一种新颖的算法,该算法通过过采样来降低噪声的影响。

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