Line Spectral Estimation with Unlimited Sensing
Hongwei Wang, Jun Fang, Hongbin Li, Geert Leus

TL;DR
This paper introduces two noise-robust algorithms for line spectral estimation using a modulo ADC in an unlimited sensing framework, improving accuracy over existing higher-order difference methods.
Contribution
The paper develops two novel algorithms leveraging first-order differences and high sampling rates for robust line spectral estimation with modulo ADCs.
Findings
Algorithms are robust against noise.
Significant performance improvement over higher-order difference methods.
Effective in high sampling rate scenarios.
Abstract
In the paper, we consider the line spectral estimation problem in an unlimited sensing framework (USF), where a modulo analog-to-digital converter (ADC) is employed to fold the input signal back into a bounded interval before quantization. Such an operation is mathematically equivalent to taking the modulo of the input signal with respect to the interval. To overcome the noise sensitivity of higher-order difference-based methods, we explore the properties of the first-order difference of modulo samples, and develop two line spectral estimation algorithms based on first-order difference, which are robust against noise. Specifically, we show that, with a high probability, the first-order difference of the original samples is equivalent to that of the modulo samples. By utilizing this property, line spectral estimation is solved via a robust sparse signal recovery approach. The second…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Advanced Measurement and Metrology Techniques
