CSST Dense Star Field Preparation: A Framework for Astrometry and Photometry for Dense Star Field Images Obtained by the China Space Station Telescope (CSST)

Yining Wang, Rui Sun, Tianyuan Deng, Chenghui Zhao, Peixuan Zhao, Jiayi Yang, Peng Jia, Hui-Gen Liu, Jilin Zhou
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Abstract

The Chinese Space Station Telescope (CSST) is a telescope with 2-meter diameter, obtaining images with high quality through wide-field observations. In its first observation cycle, the CSST will scan portions of the galactic centre with 7 different bands across different epochs to capture time-domain observation data. These data have significant potential for the study of properties of stars and exoplanets. However, the density of stars in the galactic centre is high, and it is a well-known challenge to perform astrometry and photometry in such a dense star field. This paper presents a deep learning-based framework designed to process dense star field images obtained by the CSST, which includes photometry, astrometry, and classifications of targets according to their light curve periods. With simulated CSST observation data, we demonstrate that this deep learning framework achieves photometry accuracy of 0.23% and astrometry accuracy of 0.03 pixel for stars with moderate brightness mag=24 in i band, surpassing results obtained by traditional methods. Additionally, the deep learning based light curve classification algorithm could pick up celestial targets whose magnitude variations are 1.7 times larger than magnitude variations brought by Poisson Photon Noise. We anticipate that our framework could be effectively used to process dense star field images obtained by the CSST.
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中国空间站密集星场准备:中国空间站望远镜(CSST)获取的密集星场图像的天体测量和光度测量框架
中国空间站望远镜(CSST)是一架直径为 2 米的望远镜,通过宽视场观测获得高质量的图像。在第一个观测周期中,中国空间站望远镜将在不同的纪元用 7 个不同的波段扫描银河系中心的部分区域,以获取时域观测数据。这些数据对于研究恒星和系外行星的特性具有巨大的潜力。然而,银河系中心的恒星密度很高,在如此密集的星域中进行天体测量和光度测量是一项众所周知的挑战。本文提出了一个基于深度学习的框架,旨在处理由CSST获得的密集星场图像,其中包括测光、天体测量以及根据光曲线周期对目标进行分类。通过模拟 CSST 观测数据,我们证明该深度学习框架在 i 波段中等亮度 mag=24 的恒星上实现了 0.23% 的测光精度和 0.03 像素的天体测量精度,超越了传统方法获得的结果。此外,基于深度学习的光曲线分类算法还能发现那些星等变化比泊松光子噪声带来的星等变化大 1.7 倍的天体目标。我们预计,我们的框架可以有效地用于处理 CSST 获得的密集星场图像。
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