System Approximations and Generalized Measurements in Modern Sampling Theory
Holger Boche, Volker Pohl

TL;DR
This paper explores advanced methods for signal reconstruction in bandlimited function spaces, analyzing uniform convergence, adaptive algorithms, and generalized measurements to improve sampling and recovery processes.
Contribution
It introduces new analytic tools for adaptive recovery, demonstrates the limitations of pointwise sampling, and proposes generalized measurements for effective signal reconstruction.
Findings
Adaptive algorithms require new analysis tools.
Pointwise sampling may fail to approximate LTI outputs.
Generalized measurements enable recovery from amplitude data at four times Nyquist rate.
Abstract
This paper studies several aspects of signal reconstruction of sampled data in spaces of bandlimited functions. In the first part, signal spaces are characterized in which the classical sampling series uniformly converge, and we investigate whether adaptive recovery algorithms can yield uniform convergence in spaces where non-adaptive sampling series does not. In particular, it is shown that the investigation of adaptive signal recovery algorithms needs completely new analytic tools since the methods used for non-adaptive reconstruction procedures, which are based on the celebrated Banach-Steinhaus theorem, are not applicable in the adaptive case. The second part analyzes the approximation of the output of stable linear time-invariant (LTI) systems based on samples of the input signal, and where the input is assumed to belong to the Paley-Wiener space of bandlimited functions with…
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Taxonomy
TopicsImage and Signal Denoising Methods · Photoacoustic and Ultrasonic Imaging · Mathematical Analysis and Transform Methods
