Non-Uniform Wavelet Sampling for RF Analog-to-Information Conversion
Micha\"el Pelissier, Christoph Studer

TL;DR
This paper introduces non-uniform wavelet sampling (NUWS), a novel compressive sensing-based RF feature extraction method that improves sensitivity, reduces hardware complexity, and approaches theoretical recovery limits for wideband RF signals.
Contribution
The paper presents a new CS-based A2I architecture called NUWS and a specialized variant NUWBS for multi-band signals, addressing limitations of existing RF sampling methods.
Findings
NUWBS approaches theoretical sparse signal recovery limits.
ASIC measurements validate wavelet generation for RF feature extraction.
NUWBS enhances sensitivity and reduces hardware complexity.
Abstract
Feature extraction, such as spectral occupancy, interferer energy and type, or direction-of-arrival, from wideband radio-frequency~(RF) signals finds use in a growing number of applications as it enhances RF transceivers with cognitive abilities and enables parameter tuning of traditional RF chains. In power and cost limited applications, e.g., for sensor nodes in the Internet of Things, wideband RF feature extraction with conventional, Nyquist-rate analog-to-digital converters is infeasible. However, the structure of many RF features (such as signal sparsity) enables the use of compressive sensing (CS) techniques that acquire such signals at sub-Nyquist rates. While such CS-based analog-to-information (A2I) converters have the potential to enable low-cost and energy-efficient wideband RF sensing, they suffer from a variety of real-world limitations, such as noise folding, low…
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