Improving quantum state detection with adaptive sequential observations
Abstract
For many quantum systems intended for information processing, one detects the logical state of a qubit by integrating a continuously observed quantity over time. For example, ion and atom qubits are typically measured by driving a cycling transition and counting the number of photons observed from the resulting fluorescence. Instead of recording only the total observed count in a fixed time interval, one can observe the photon arrival times and get a state detection advantage by using the temporal structure in a model such as a Hidden Markov Model. We study what further advantage may be achieved by applying pulses to adaptively transform the state during the observation. We give a three-state example where adaptively chosen transformations yield a clear advantage, and we compare performances on an ion example, where we see improvements in some regimes. We provide a software package that can be used for exploration of temporally resolved strategies with and without adaptively chosen transformations.
Cite
@article{arxiv.2204.00710,
title = {Improving quantum state detection with adaptive sequential observations},
author = {Shawn Geller and Daniel C. Cole and Scott Glancy and Emanuel Knill},
journal= {arXiv preprint arXiv:2204.00710},
year = {2023}
}
Comments
Submitted for publication in Quantum Science and Technology. 26 pages, 8 figures. Corrected typos in appendix, updated acknowledgements