Quantized compressed sensing: a survey
Publication date
2019-01-01
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Abstract
The field of quantized compressed sensing investigates how to jointly design a measurement matrix, quantizer, and reconstruction algorithm in order to accurately reconstruct low-complexity signals from a minimal number of measurements that are quantized to a finite number of bits. In this short survey, we give an overview of the state-of-the-art rigorous reconstruction results that have been obtained for three popular quantization models: one-bit quantization, uniform scalar quantization, and noise-shaping methods.
Keywords
Taverne, Applied Mathematics
Citation
Dirksen, S 2019, Quantized compressed sensing: a survey. in Compressed sensing and its applications : third International MATHEON Conference 2017. Applied and Numerical Harmonic Analysis, Springer, pp. 67-95. https://doi.org/10.1007/978-3-319-73074-5_2