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Galaxy Zoo DECaLS: Detailed Visual Morphology Measurements from Volunteers and Deep Learning for 314,000 Galaxies

Authors :
Walmsley, Mike
Lintott, Chris
Geron, Tobias
Kruk, Sandor
Krawczyk, Coleman
Willett, Kyle W.
Bamford, Steven
Kelvin, Lee S.
Fortson, Lucy
Gal, Yarin
Keel, William
Masters, Karen L.
Mehta, Vihang
Simmons, Brooke D.
Smethurst, Rebecca
Smith, Lewis
Baeten, Elisabeth M.
Macmillan, Christine
Publication Year :
2021

Abstract

We present Galaxy Zoo DECaLS: detailed visual morphological classifications for Dark Energy Camera Legacy Survey images of galaxies within the SDSS DR8 footprint. Deeper DECaLS images (r=23.6 vs. r=22.2 from SDSS) reveal spiral arms, weak bars, and tidal features not previously visible in SDSS imaging. To best exploit the greater depth of DECaLS images, volunteers select from a new set of answers designed to improve our sensitivity to mergers and bars. Galaxy Zoo volunteers provide 7.5 million individual classifications over 314,000 galaxies. 140,000 galaxies receive at least 30 classifications, sufficient to accurately measure detailed morphology like bars, and the remainder receive approximately 5. All classifications are used to train an ensemble of Bayesian convolutional neural networks (a state-of-the-art deep learning method) to predict posteriors for the detailed morphology of all 314,000 galaxies. When measured against confident volunteer classifications, the networks are approximately 99% accurate on every question. Morphology is a fundamental feature of every galaxy; our human and machine classifications are an accurate and detailed resource for understanding how galaxies evolve.<br />Comment: Accepted by MNRAS July '21. Open access DOI below. Data at https://doi.org/10.5281/zenodo.4196266. Code at https://www.github.com/mwalmsley/zoobot. Docs at https://zoobot.readthedocs.io/. Interactive viewer at https://share.streamlit.io/mwalmsley/galaxy-poster/gz_decals_mike_walmsley.py

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2102.08414
Document Type :
Working Paper
Full Text :
https://doi.org/10.1093/mnras/stab2093