4.6 Article

Morpheus: A Deep Learning Framework for the Pixel-level Analysis of Astronomical Image Data

Journal

ASTROPHYSICAL JOURNAL SUPPLEMENT SERIES
Volume 248, Issue 1, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.3847/1538-4365/ab8868

Keywords

Galaxy classification systems; Galaxies; Extragalactic astronomy; Convolutional neural networks; Computational methods; GPU computing

Funding

  1. NASA [NAS5-26555, NNG16PJ25C]
  2. NSF MRI [AST 1828315]
  3. Eugene V. Cota-Robles Fellowship
  4. 3D-HST Treasury Program [GO 12177, 12328]

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We present Morpheus, a new model for generating pixel-level morphological classifications of astronomical sources. Morpheus leverages advances in deep learning to perform source detection, source segmentation, and morphological classification pixel-by-pixel via a semantic segmentation algorithm adopted from the field of computer vision. By utilizing morphological information about the flux of real astronomical sources during object detection, Morpheus shows resiliency to false-positive identifications of sources. We evaluate Morpheus by performing source detection, source segmentation, morphological classification on the Hubble Space Telescope data in the five CANDELS fields with a focus on the GOODS South field, and demonstrate a high completeness in recovering known GOODS South 3D-HST sources with H < 26 AB. We release the code publicly, provide online demonstrations, and present an interactive visualization of the Morpheus results in GOODS South.

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