Dark soliton detection using persistent homology.

Journal: Chaos (Woodbury, N.Y.)
Published Date:

Abstract

Classifying images often requires manual identification of qualitative features. Machine learning approaches including convolutional neural networks can achieve accuracy comparable to human classifiers but require extensive data and computational resources to train. We show how a topological data analysis technique, persistent homology, can be used to rapidly and reliably identify qualitative features in experimental image data. The identified features can be used as inputs to simple supervised machine learning models, such as logistic regression models, which are easier to train. As an example, we consider the identification of dark solitons using a dataset of 6257 labeled atomic Bose-Einstein condensate density images.

Authors

  • Daniel Leykam
    Centre for Quantum Technologies, National University of Singapore, 3 Science Drive 2, Singapore 117543.
  • Irving Rondón
    School of Computational Sciences, Korea Institute for Advanced Study, 85 Hoegi-ro, Seoul 02455, Republic of Korea.
  • Dimitris G Angelakis
    Centre for Quantum Technologies, National University of Singapore, 3 Science Drive 2, Singapore 117543.