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Photometric Redshifts from SDSS Images with an Interpretable Deep Capsule Network

Authors :
Dey, Biprateep
Andrews, Brett H.
Newman, Jeffrey A.
Mao, Yao-Yuan
Rau, Markus Michael
Zhou, Rongpu
Source :
MNRAS Vol 515 Issue 4 October 2022 Pgs 5285 5305
Publication Year :
2021

Abstract

Studies of cosmology, galaxy evolution, and astronomical transients with current and next-generation wide-field imaging surveys like the Rubin Observatory Legacy Survey of Space and Time (LSST) are all critically dependent on estimates of photometric redshifts. Capsule networks are a new type of neural network architecture that is better suited for identifying morphological features of the input images than traditional convolutional neural networks. We use a deep capsule network trained on $ugriz$ images, spectroscopic redshifts, and Galaxy Zoo spiral/elliptical classifications of $\sim$400,000 Sloan Digital Sky Survey (SDSS) galaxies to do photometric redshift estimation. We achieve a photometric redshift prediction accuracy and a fraction of catastrophic outliers that are comparable to or better than current methods for SDSS main galaxy sample-like data sets ($r\leq17.8$ and $z_{\mathrm{spec}}\leq0.4$) while requiring less data and fewer trainable parameters. Furthermore, the decision-making of our capsule network is much more easily interpretable as capsules act as a low-dimensional encoding of the image. When the capsules are projected on a 2-dimensional manifold, they form a single redshift sequence with the fraction of spirals in a region exhibiting a gradient roughly perpendicular to the redshift sequence. We perturb encodings of real galaxy images in this low-dimensional space to create synthetic galaxy images that demonstrate the image properties (e.g., size, orientation, and surface brightness) encoded by each dimension. We also measure correlations between galaxy properties (e.g., magnitudes, colours, and stellar mass) and each capsule dimension. We publicly release our code, estimated redshifts, and additional catalogues at https://biprateep.github.io/encapZulate-1 .<br />Comment: 22 pages, 12 figures. Published in MNRAS

Details

Database :
arXiv
Journal :
MNRAS Vol 515 Issue 4 October 2022 Pgs 5285 5305
Publication Type :
Report
Accession number :
edsarx.2112.03939
Document Type :
Working Paper
Full Text :
https://doi.org/10.1093/mnras/stac2105