Abstract

Galaxy redshifts are a key characteristic for nearly all extragalactic studies. Since spectroscopic redshifts require additional telescope and human resources, millions of galaxies are known without spectroscopic redshifts. Therefore, it is crucial to have methods for estimating the redshift of a galaxy based on its photometric properties, the so-called photo-z. We have developed NetZ, a new method using a convolutional neural network (CNN) to predict the photo-z based on galaxy images, in contrast to previous methods that often used only the integrated photometry of galaxies without their images. We use data from the Hyper Suprime-Cam Subaru Strategic Program (HSC SSP) in five different filters as the training data. The network over the whole redshift range between 0 and 4 performs well overall and especially in the high-z range, where it fares better than other methods on the same data. We obtained a precision |zpred − zref| of σ = 0.12 (68% confidence interval) with a CNN working for all galaxy types averaged over all galaxies in the redshift range of 0 to ∼4. We carried out a comparison with a network trained on point-like sources, highlighting the importance of morphological information for our redshift estimation. By limiting the scope to smaller redshift ranges or to luminous red galaxies, we find a further notable improvement. We have published more than 34 million new photo-z values predicted with NetZ. This shows that the new method is very simple and swift in application, and, importantly, it covers a wide redshift range that is limited only by the available training data. It is broadly applicable, particularly with regard to upcoming surveys such as the Rubin Observatory Legacy Survey of Space and Time, which will provide images of billions of galaxies with similar image quality as HSC. Our HSC photo-z estimates are also beneficial to the Euclid survey, given the overlap in the footprints of the HSC and Euclid.

Highlights

  • Past imaging surveys have detected billions of galaxies over the sky, a number that will grow substantially with forthcoming wide-field surveys, such as the Rubin Observatory Legacy Survey of Space and Time (LSST)

  • We have developed NetZ, a new method using a convolutional neural network (CNN) to predict the photo-z based on galaxy images, in contrast to previous methods that often used only the integrated photometry of galaxies without their images

  • It is trained on images observed in five different filters, on Hyper Suprime-Cam Subaru Strategic Program (HSC SSP, hereafter HSC; Aihara et al 2018) grizy images of galaxies with known spectroscopic or reliable ∼30-band photometric redshifts

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Summary

Introduction

Past imaging surveys have detected billions of galaxies over the sky, a number that will grow substantially with forthcoming wide-field surveys, such as the Rubin Observatory Legacy Survey of Space and Time (LSST). The templates are used to match the observed colors with the predicted ones (via the so-called nearest neighbor algorithms) Such an approach represents the opportunity to provide photo-z estimates in regions of color-magnitude space where no reference redshifts are available. The main requirement is a training sample with known (i.e., spectroscopic or very good photo-z) reference redshifts, which should match the expected redshift distribution. Since we provide images of different filters, our CNN is able to extract the color and magnitude parameters internally and output a photo-z value at the end It is trained on images observed in five different filters, on Hyper Suprime-Cam Subaru Strategic Program (HSC SSP, hereafter HSC; Aihara et al 2018) grizy images of galaxies with known spectroscopic or reliable ∼30-band photometric redshifts.

Training data
Deep learning and the network architecture
Main redshift network NetZmain
Detailed comparison to HSC method DEmP
Photo-z with morphological information
Photo-z estimates for LSST
Limited-range and LRG-only redshift network
Findings
Summary and conclusions
Full Text
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