APS Logo

Deep Learning Method for Image Processing in Cold Atom Experiments

ORAL

Abstract

Image processing is a fundamental part of cold atom experiments. Many such experiments use absorption imaging, which requires fitting the data to some distribution to extract valuable experimental metrics. Traditionally this is done using least squares fitting algorithms, however they are highly sensitive to noise, computationally costly, and rely heavily on the accuracy of the initial guess. We present a deep learning method that directly processes raw absorption images to output Gaussian fit parameters. By leveraging convolutional neural networks, we achieve greater robustness and speed compared to a traditional fitting algorithm.

Publication: Manuscript still in preparation

Presenters

  • Joshua M Wilson

    Space Dynamics Laboratory

Authors

  • Joshua M Wilson

    Space Dynamics Laboratory

  • Robert H Leonard

    Space Dynamics Laboratory

  • Jacob G Morrey

    Air Force Research Laboratories

  • Isaac Peterson

    Air Force Research Laboratories

  • Francisco Fonta

    Space Dynamics Laboratory

  • Spencer E Olson

    Air Force Research Laboratory (AFRL)