基于深度神经网络的大视场小口径望远镜测光框架。

J. Peng, Sun Yongyang, Liu Qiang
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引用次数: 0

摘要

大视场小口径望远镜主要用于获取点状和条纹状天体的科学信息。但是,wfsat获得的图像质量受到背景噪声和变点扩散函数的严重影响。开发高速、高效的数据处理方法对进一步的科学研究具有重要意义。近年来,深度神经网络被提出用于天体的检测和分类,并显示出比经典方法更好的性能。在本文中,我们进一步扩展了基于深度神经网络的天文目标检测框架的能力,使其适用于光度和天体测量。我们在深度神经网络中加入新的分支,同时获取不同天体的类型、星等和位置。通过模拟数据的测试,我们发现我们的神经网络在光度测量方面比经典方法有更好的性能。由于测光和天体测量是回归算法,得到的是高精度的测量结果,而不是粗糙的分类结果,因此测光和天体测量结果的精度会受到不同观测条件的影响。为了解决这一问题,我们进一步提出在观测条件发生变化时,利用参考星对深度神经网络进行迁移学习策略训练。本文提出的测光框架可作为wfsat端到端快速数据处理框架,进一步提高wfsat的响应速度和科学产出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Deep Neural Network based Photometry Framework for Wide Field Small Aperture Telescopes.
Wide field small aperture telescopes (WFSATs) are mainly used to obtain scientific information of point--like and streak--like celestial objects. However, qualities of images obtained by WFSATs are seriously affected by the background noise and variable point spread functions. Developing high speed and high efficiency data processing method is of great importance for further scientific research. In recent years, deep neural networks have been proposed for detection and classification of celestial objects and have shown better performance than classical methods. In this paper, we further extend abilities of the deep neural network based astronomical target detection framework to make it suitable for photometry and astrometry. We add new branches into the deep neural network to obtain types, magnitudes and positions of different celestial objects at the same time. Tested with simulated data, we find that our neural network has better performance in photometry than classical methods. Because photometry and astrometry are regression algorithms, which would obtain high accuracy measurements instead of rough classification results, the accuracy of photometry and astrometry results would be affected by different observation conditions. To solve this problem, we further propose to use reference stars to train our deep neural network with transfer learning strategy when observation conditions change. The photometry framework proposed in this paper could be used as an end--to--end quick data processing framework for WFSATs, which can further increase response speed and scientific outputs of WFSATs.
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