Hierarchical Compressed Sensing
Kapitel i bok, 2022

Compressed sensing is a paradigm within signal processing that provides the means for recovering structured signals from linear measurements in a highly efficient manner. Originally devised for the recovery of sparse signals, it has become clear that a similar methodology would also carry over to a wealth of other classes of structured signals. In this work, we provide an overview over the theory of compressed sensing for a particularly rich family of such signals, namely those of hierarchically structured signals. Examples of such signals are constituted by blocked vectors, with only few non-vanishing sparse blocks. We present recovery algorithms based on efficient hierarchical hard thresholding. The algorithms are guaranteed to converge, in a stable fashion with respect to both measurement noise and model mismatches, to the correct solution provided the measurement map acts isometrically restricted to the signal class. We then provide a series of results establishing the required condition for large classes of measurement ensembles. Building upon this machinery, we sketch practical applications of this framework in machine-type communications and quantum tomography.

Författare

Jens Eisert

Freie Universität Berlin

Axel Flinth

Chalmers, Elektroteknik, Signalbehandling och medicinsk teknik

Benedikt Groß

Freie Universität Berlin

Ingo Roth

Freie Universität Berlin

Technology Innovation Institute

Gerhard Wunder

Freie Universität Berlin

Applied and Numerical Harmonic Analysis

22965009 (ISSN) 22965017 (eISSN)

1-35

Ämneskategorier

Telekommunikation

Reglerteknik

Signalbehandling

DOI

10.1007/978-3-031-09745-4_1

Mer information

Senast uppdaterat

2023-04-21