Enabling Dark Energy Science with Deep Generative Models of Galaxy Images

Authors

  • Siamak Ravanbakhsh Carnegie Mellon University
  • Francois Lanusse Carnegie Mellon University
  • Rachel Mandelbaum Carnegie Mellon University
  • Jeff Schneider Carnegie Mellon University
  • Barnabas Poczos Carnegie Mellon University

DOI:

https://doi.org/10.1609/aaai.v31i1.10755

Keywords:

deep learning, cosmology, weak lensing, galaxy image, generative model, conditional VAE, conditional GAN, generative adversarial network, conditional variational autoencoder

Abstract

Understanding the nature of dark energy, the mysterious force driving the accelerated expansion of the Universe, is a major challenge of modern cosmology. The next generation of cosmological surveys, specifically designed to address this issue, rely on accurate measurements of the apparent shapes of distant galaxies. However, shape measurement methods suffer from various unavoidable biases and therefore will rely on a precise calibration to meet the accuracy requirements of the science analysis. This calibration process remains an open challenge as it requires large sets of high quality galaxy images. To this end, we study the application of deep conditional generative models in generating realistic galaxy images. In particular we consider variations on conditional variational autoencoder and introduce a new adversarial objective for training of conditional generative networks. Our results suggest a reliable alternative to the acquisition of expensive high quality observations for generating the calibration data needed by the next generation of cosmological surveys.

Downloads

Published

2017-02-12

How to Cite

Ravanbakhsh, S., Lanusse, F., Mandelbaum, R., Schneider, J., & Poczos, B. (2017). Enabling Dark Energy Science with Deep Generative Models of Galaxy Images. Proceedings of the AAAI Conference on Artificial Intelligence, 31(1). https://doi.org/10.1609/aaai.v31i1.10755

Issue

Section

Main Track: Machine Learning Applications