Extracting Photometric Redshift from Galaxy Flux and Image Data using Neural Networks in the CSST Survey
Xingchen Zhou, Yan Gong, Xian-Min Meng, Ye Cao, Xuelei Chen, Zhu Chen,, Wei Du, Liping Fu, and Zhijian Luo

TL;DR
This paper develops neural network models to accurately estimate galaxy photometric redshifts from flux and image data expected from the CSST survey, improving precision for cosmological analyses.
Contribution
It introduces a hybrid neural network combining flux and image data with transfer learning, achieving improved photo-$z$ accuracy over models using only one data type.
Findings
Achieved $\sigma_{ m NMAD} = 0.020$ with the hybrid network.
Reduced outlier fraction to 0.90% with the hybrid approach.
Networks effectively extract photo-$z$ information from simulated CSST data.
Abstract
The accuracy of galaxy photometric redshift (photo-) can significantly affect the analysis of weak gravitational lensing measurements, especially for future high-precision surveys. In this work, we try to extract photo- 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 catalogs, considering the CSST instrumental effects. Galaxy flux data are then measured directly from these images by aperture photometry. The Multi-Layer Perceptron (MLP) and Convolutional Neural Network (CNN) are constructed to predict photo- from fluxes and images, respectively. We also propose to use an efficient hybrid network, which combines MLP and CNN, by employing transfer…
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