Yunxi Dong, Bowen Zheng, Fan Yang, Hong Tang, Huan Zhao, Yi Huang, Tian Gu, Juejun Hu, Hualiang Zhang
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引用次数: 0
Abstract
Chromatic aberration has been the main showstopper for metalenses when it comes to imaging applications with broadband sources such as ambient light. In wide field-of-view metalenses, this challenge becomes far more severe due to exacerbated lateral chromatic aberrations. In this paper, it is demonstrated, for the first time, full-color wide field-of-view imaging using a fisheye metalens coupled with deep learning computational processing. This approach is capable of restoring panoramic images with enhanced signal-to-noise ratio while effectively correcting chromatic aberration, distortion, and vignetting. Furthermore, it is shown that the deep learning algorithm is robust against various lighting conditions and object distances, making it a versatile solution for practical imaging applications involving wide field-of-view metalenses.
期刊介绍:
Advanced Optical Materials, part of the esteemed Advanced portfolio, is a unique materials science journal concentrating on all facets of light-matter interactions. For over a decade, it has been the preferred optical materials journal for significant discoveries in photonics, plasmonics, metamaterials, and more. The Advanced portfolio from Wiley is a collection of globally respected, high-impact journals that disseminate the best science from established and emerging researchers, aiding them in fulfilling their mission and amplifying the reach of their scientific discoveries.