Li Ziwei, Zhou Wei, Zhou Zhanhong, Zhang Shuqi, Shi Jianyang, Shen Chao, Zhang Junwen, Chi Nan, Dai Qionghai
School of Information Science and Technology, Fudan University, 200433, Shanghai, China.
Shanghai Engineering Research Center of Low-Earth-Orbit Satellite Communication and Applications, 200433, Shanghai, China.
Nat Commun. 2024 Feb 19;15(1):1498. doi: 10.1038/s41467-024-45745-7.
Multimode fiber (MMF) which supports parallel transmission of spatially distributed information is a promising platform for remote imaging and capacity-enhanced optical communication. However, the variability of the scattering MMF channel poses a challenge for achieving long-term accurate transmission over long distances, of which static optical propagation modeling with calibrated transmission matrix or data-driven learning will inevitably degenerate. In this paper, we present a self-supervised dynamic learning approach that achieves long-term, high-fidelity transmission of arbitrary optical fields through unstabilized MMFs. Multiple networks carrying both long- and short-term memory of the propagation model variations are adaptively updated and ensembled to achieve robust image recovery. We demonstrate >99.9% accuracy in the transmission of 1024 spatial degree-of-freedom over 1 km length MMFs lasting over 1000 seconds. The long-term high-fidelity capability enables compressive encoded transfer of high-resolution video with orders of throughput enhancement, offering insights for artificial intelligence promoted diffusive spatial transmission in practical applications.
支持空间分布信息并行传输的多模光纤(MMF)是用于远程成像和容量增强光通信的一个很有前景的平台。然而,散射MMF通道的可变性对实现长距离的长期精确传输构成了挑战,其中使用校准传输矩阵或数据驱动学习的静态光传播建模将不可避免地退化。在本文中,我们提出了一种自监督动态学习方法,该方法通过未稳定的MMF实现任意光场的长期、高保真传输。携带传播模型变化的长期和短期记忆的多个网络被自适应更新和集成,以实现稳健的图像恢复。我们展示了在长达1公里的MMF上持续超过1000秒传输1024个空间自由度时,准确率超过99.9%。长期高保真能力实现了具有吞吐量增强量级的高分辨率视频的压缩编码传输,为实际应用中人工智能促进的扩散空间传输提供了见解。