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Galaxy Zoo: Probabilistic Morphology through Bayesian CNNs and Active Learning

Authors :
Walmsley, Mike
Smith, Lewis
Lintott, Chris
Gal, Yarin
Bamford, Steven
Dickinson, Hugh
Fortson, Lucy
Kruk, Sandor
Masters, Karen
Scarlata, Claudia
Simmons, Brooke
Smethurst, Rebecca
Wright, Darryl
Publication Year :
2019

Abstract

We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer responses to infer posteriors for the visual morphology of galaxies. Bayesian CNN can learn from galaxy images with uncertain labels and then, for previously unlabelled galaxies, predict the probability of each possible label. Our posteriors are well-calibrated (e.g. for predicting bars, we achieve coverage errors of 11.8% within a vote fraction deviation of 0.2) and hence are reliable for practical use. Further, using our posteriors, we apply the active learning strategy BALD to request volunteer responses for the subset of galaxies which, if labelled, would be most informative for training our network. We show that training our Bayesian CNNs using active learning requires up to 35-60% fewer labelled galaxies, depending on the morphological feature being classified. By combining human and machine intelligence, Galaxy Zoo will be able to classify surveys of any conceivable scale on a timescale of weeks, providing massive and detailed morphology catalogues to support research into galaxy evolution.<br />Comment: Accepted by MNRAS. 21 pages, including appendices

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1905.07424
Document Type :
Working Paper
Full Text :
https://doi.org/10.1093/mnras/stz2816