Extracting photometric redshift from galaxy flux and image data using neural networks in the CSST survey

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY(2022)

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摘要
The accuracy of galaxy photometric redshift (photo-z) can significantly affect the analysis of weak gravitational lensing measurements, especially for future high-precision surveys. In this work, we try to extract photo-z information from both galaxy flux and image data expected to be obtained by China Space Station Telescope (CSST) using neural networks. We generate mock galaxy images based on the observational images from the Advanced Camera for Surveys of Hubble Space Telescope (HST-ACS) and COSMOS catalogues, considering the CSST instrumental effects. Galaxy flux data are then measured directly from these images by aperture photometry. The multilayer perceptron (MLP) and convolutional neural network (CNN) are constructed to predict photo-z from fluxes and images, respectively. We also propose to use an efficient hybrid network, which combines the MLP and CNN, by employing the transfer learning techniques to investigate the improvement of the result with both flux and image data included. We find that the photo-z accuracy and outlier fraction can achieve sigma(NMAD) = 0.023 and eta = 1.43 per cent for the MLP using flux data only, and sigma(NMAD) = 0.025 and eta = 1.21 per cent for the CNN using image data only. The result can be further improved in high efficiency as sigma(NMAD) = 0.020 and eta = 0.90 per cent for the hybrid transfer network. These approaches result in similar galaxy median and mean redshifts 0.8 and 0.9, respectively, for the redshift range from 0 to 4. This indicates that our networks can effectively and properly extract photo-z information from the CSST galaxy flux and image data.
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关键词
methods: statistical, techniques: image processing, techniques: photometric, galaxies: distances and redshifts, galaxies: photometry, large-scale structure of Structure
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