Compressive quantum waveform estimation
Abstract
Quantum waveform estimation, in which quantum sensors sample entire time series, promises to revolutionize the sensing of weak and stochastic signals, such as the biomagnetic impulses emitted by firing neurons. For long duration signals with rapid transients, regular quantum sampling becomes prohibitively resource intensive as it demands many measurements with distinct control and readout. In this Manuscript, we demonstrate how careful choice of quantum measurements, along with the modern mathematics of compressive sensing, achieves quantum waveform estimation of sparse signals in a number of measurements far below the Nyquist requirement. We sense synthesized neural-like magnetic signals with radiofrequency-dressed ultracold atoms, retrieving successful waveform estimates with as few measurements as compressive theoretical bounds guarantee.
Cite
@article{arxiv.2310.15630,
title = {Compressive quantum waveform estimation},
author = {Alex Tritt and Joshua Morris and Christopher C. Bounds and Hamish A. M. Taylor and James Saunderson and L. D. Turner},
journal= {arXiv preprint arXiv:2310.15630},
year = {2023}
}
Comments
6 pages + 3 pages of Supplemental Material, 3 figures + 1 supplemental figure