基于自适应采样的信号处理收敛分析的一般方法

H. Boche, U. Monich
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引用次数: 3

摘要

众所周知,存在某些采样序列发散的带限信号。避免发散的一种可能方法是使采样序列适应信号。本文研究了每个逼近步骤中所使用的和数的自适应性,以及这种自适应信号处理是否能改善采样序列的收敛性。我们通过考虑一般巴拿赫空间中的近似过程来解决这个问题,并证明了自适应将散度信号集从残差集减少到贫集或空集。由于自适应逼近过程的非线性,本研究不能采用Banach-Steinhaus理论进行。我们提出了基于采样的信号处理的例子,其中最近观察到与自适应信号处理的有效性相关的强发散。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A general approach for convergence analysis of adaptive sampling-based signal processing
It is well-known that there exist bandlimited signals for which certain sampling series are divergent. One possible way of circumventing the divergence is to adapt the sampling series to the signals. In this paper we study adaptivity in the number of summands that are used in each approximation step, and whether this kind of adaptive signal processing can improve the convergence behavior of the sampling series. We approach the problem by considering approximation processes in general Banach spaces and show that adaptivity reduces the set of signals with divergence from a residual set to a meager or empty set. Due to the non-linearity of the adaptive approximation process, this study cannot be done by using the Banach-Steinhaus theory. We present examples from sampling based signal processing, where recently strong divergence, which is connected to the effectiveness of adaptive signal processing, has been observed.
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