ITSYSYITMar 15, 2011

Xampling: Compressed Sensing of Analog Signals

arXiv:1103.296033 citationsh-index: 107
Originality Highly original
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Provides a unified theoretical and practical framework for analog compressed sensing, addressing a key bottleneck in applying CS to continuous-time signals.

Xampling generalizes compressed sensing to analog signals, enabling low-rate sampling and processing of signals in a union of subspaces. The framework covers diverse applications like multiband communications, radar imaging, and medical imaging, with hardware implementations demonstrated.

Xampling generalizes compressed sensing (CS) to reduced-rate sampling of analog signals. A unified framework is introduced for low rate sampling and processing of signals lying in a union of subspaces. Xampling consists of two main blocks: Analog compression that narrows down the input bandwidth prior to sampling with commercial devices followed by a nonlinear algorithm that detects the input subspace prior to conventional signal processing. A variety of analog CS applications are reviewed within the unified Xampling framework including a general filter-bank scheme for sparse shift-invariant spaces, periodic nonuniform sampling and modulated wideband conversion for multiband communications with unknown carrier frequencies, acquisition techniques for finite rate of innovation signals with applications to medical and radar imaging, and random demodulation of sparse harmonic tones. A hardware-oriented viewpoint is advocated throughout, addressing practical constraints and exemplifying hardware realizations where relevant. It will appear as a chapter in a book on "Compressed Sensing: Theory and Applications" edited by Yonina Eldar and Gitta Kutyniok.

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