Imputation of Missing Photometric Data and Photometric Redshift Estimation for CSST
Zhijian Luo, Zhirui Tang, Zhu Chen, Liping Fu, Wei Du, Shaohua Zhang,, Yan Gong, Chenggang Shu, Junhao Lu, Yicheng Li, Xian-Min Meng, Xingchen Zhou, and Zuhui Fan

TL;DR
This paper introduces a deep learning approach using GAIN to impute missing photometric data in CSST, significantly improving photometric redshift estimation accuracy when data gaps are present.
Contribution
The study applies Generative Adversarial Imputation Networks to fill missing photometric data, enhancing photo-$z$ estimation accuracy for the upcoming CSST survey.
Findings
Imputation accuracy is high when missing data rate is below 30%.
Photometric redshift estimation quality improves after data imputation.
The method effectively utilizes incomplete observational data for better analysis.
Abstract
Accurate photometric redshift (photo-) estimation requires support from multi-band observational data. However, in the actual process of astronomical observations and data processing, some sources may have missing observational data in certain bands for various reasons. This could greatly affect the accuracy and reliability of photo- estimation for these sources, and even render some estimation methods unusable. The same situation may exist for the upcoming Chinese Space Station Telescope (CSST). In this study, we employ a deep learning method called Generative Adversarial Imputation Networks (GAIN) to impute the missing photometric data in CSST, aiming to reduce the impact of data missing on photo- estimation and improve estimation accuracy. Our results demonstrate that using the GAIN technique can effectively fill in the missing photometric data in CSST. Particularly, when…
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Taxonomy
TopicsCalibration and Measurement Techniques · Satellite Image Processing and Photogrammetry · Infrared Target Detection Methodologies
