Super-resolution imaging of telescopic systems based on optical-neural network joint optimization

Youhong Sun, Tao Zhang, Haodong Shi, Qiang Fu, Jianan Liu, Kaikai Wang, Chao Wang
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Abstract

Optical telescopes are an important tool for acquiring optical information about distant objects, and resolution is an important indicator that measures the ability to observe object details. However, due to the effects of system aberration, atmospheric vortex, and other factors, the observation image of ground-based telescopes is often degraded, resulting in reduced resolution. This paper proposes an optical-neural network joint optimization method to improve the resolution of the observed image by co-optimizing the point spread function (PSF) of the telescopic system and the image super-resolution network. To improve the speed of image reconstruction, we designed a generative adversarial net (LCR-GAN) with light parameters, which is much faster than the latest unsupervised networks. To reconstruct the PSF trained by the network in the optical path, a phase mask is introduced. It improves the image reconstruction effect of LCR-GAN by reconstructing the point spread function that best matches the network. The results of simulation and verification experiments show that compared with the pure deep learning method, the super-resolution image reconstructed by this method is rich in detail and easier to distinguish stars or stripes.
基于光学神经网络联合优化的望远镜系统超分辨率成像技术
光学望远镜是获取遥远天体光学信息的重要工具,分辨率是衡量观测天体细节能力的重要指标。然而,由于系统像差、大气漩涡等因素的影响,地基望远镜的观测图像往往会出现劣化,导致分辨率降低。本文提出了一种光学-神经网络联合优化方法,通过共同优化望远镜系统的点扩散函数(PSF)和图像超分辨率网络来提高观测图像的分辨率。为了提高图像重建的速度,我们设计了一个具有光参数的生成对抗网(LCR-GAN),它比最新的无监督网络要快得多。为了在光路中重建网络训练的 PSF,我们引入了相位掩码。它通过重建与网络最匹配的点扩散函数,提高了 LCR-GAN 的图像重建效果。仿真和验证实验结果表明,与纯深度学习方法相比,该方法重建的超分辨率图像细节丰富,更容易分辨星星或条纹。
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