Optimized Observable Readout from Single-shot Images of Ultracold Atoms via Machine Learning
ORAL
Abstract
Single-shot images are the standard readout of experiments with ultracold atoms – the tarnished looking glass into their many-body physics. The efficient extraction of observables from single- shot images is thus crucial. Here, we demonstrate how artificial neural networks can optimize this extraction. In contrast to standard averaging approaches, machine learning allows both one- and two-particle densities to be accurately obtained from a drastically reduced number of single-shot images. Quantum fluctuations and correlations are directly harnessed to obtain physical observables for bosons in a tilted double-well potential at an unprecedented accuracy. Strikingly, machine learning also enables a reliable extraction of momentum-space observables from real-space single- shot images and vice versa. This obviates the need for a reconfiguration of the experimental setup between in-situ and time-of-flight imaging, thus potentially granting an outstanding reduction in resources.
Preprint available at https://arXiv.org/abs/2010.14510
Preprint available at https://arXiv.org/abs/2010.14510
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Presenters
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Paolo Molignini
University of Cambridge, Clarendon Laboratory, University of Oxford
Authors
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Paolo Molignini
University of Cambridge, Clarendon Laboratory, University of Oxford
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Axel U. J. Lode
University of Freiburg, Institute of Physics, Albert-Ludwig University of Freiburg, Institute of Physics, Albert-Ludwigs-Universität Freiburg
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Rui Lin
ETH Zürich, Institute of Theoretical Physics, ETH Zürich, ETH Zurich
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Miriam Büttner
University of Freiburg
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Luca Papariello
Research Studio Data Science, Research Studio Data Science, RSA FG
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Camille Leveque
Vienna Center for Quantum Science and Technology
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Chitra Ramasubramanian
ETH Zürich
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Marios Tsatsos
Honest AI Ltd.
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Dieter Jaksch
University of Oxford, Clarendon Laboratory, University of Oxford