Signal tracking beyond the time resolution of an atomic sensor by Kalman filtering

ORAL

Abstract

We study causal waveform estimation (tracking) of time-varying signals in a paradigmatic atomic sensor, an alkali vapor monitored by Faraday rotation probing. We use Kalman filtering, which optimally tracks known linear Gaussian stochastic processes, to estimate stochastic input signals that we generate by optical pumping. Comparing the known input to the estimates, we confirm the accuracy of the atomic statistical model and the reliability of the Kalman filter, allowing recovery of waveform details far briefer than the sensor's intrinsic time resolution. With proper filter choice, we obtain similar benefits when tracking partially-known and non-Gaussian signal processes, as are found in most practical sensing applications. The method evades the trade-off between sensitivity and time resolution in coherent sensing.

*European Union’s Horizon 2020 Marie Sklodowska-Curie agreements QUTEMAG (654339) and Q-METAPP (655161), European Research Council (ERC) projects AQUMET (280169) and ERIDIAN (713682); European Union project QUIC (641122);~the Spanish MINECO projects MAQRO (Ref. FIS2015-68039-P), XPLICA (FIS2014-62181-EXP)

Presenters

  • Ricardo Jimenez-Martinez

    • ICFO-The Institute of Photonic Sciences

Authors

  • Ricardo Jimenez-Martinez

    • ICFO-The Institute of Photonic Sciences
  • Charikleia Troullinou

    • ICFO-The Institute of Photonic Sciences
  • Vito Lucivero

    • ICFO-The Institute of Photonic Sciences
  • Jia Kong

    • ICFO-The Institute of Photonic Sciences
  • Morgan Mitchell

    • ICFO-The Institute of Photonic Sciences
  • Jan Kolodynski

    • ICFO-The Institute of Photonic Sciences