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Reconstruction of subsampled Landau Fan Measurement using Compressed sensing and Deep Learning

ORAL

Abstract

A flurry of recent developments has established 2D material and van der Waals heterostructure as an ideal solid-state platform for studying novel emergent phenomena as it offers versatile experimental controls for characterizing and manipulating the underlying order. However, experimental efforts to explore the multi-dimensional phase space, e.g. Landau fan measurement in graphene/hexagonal boron nitride structure, often require prolonged measurements. Here we explore a method to accelerate data acquisition by reconstructing an undersampled data set. Landau fan maps measured in graphene/hexagonal boron nitride structure will serve as an example to demonstrate the method’s viability and efficiency. To reconstruct undersampled data, we explore a traditional method as compressive sensing and two deep learning techniques: an enhanced deep residual network for a single image super-resolution model (EDSR), and a Noise2Noise neural network. For the sampling ratio 0.11, the EDSR and Noise2Noise methods indicate comparable performance, while both of the deep learning techniques demonstrate better performance compared to compressed sensing.

Presenters

  • Phum Siriviboon

    Brown University

Authors

  • Phum Siriviboon

    Brown University

  • Erin Morissette

    Brown University, Department of Physics, Brown University

  • Andrew M Mounce

    Center for Integrated Nanotechnologies, Sandia National Laboratories, Sandia National Laboratories

  • Jia Li

    Brown University, Department of Physics, Brown University