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光束轨道角动量模态人工智能感知方法研究进展(特邀)

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涡旋光束携带的轨道角动量(OAM)作为一种全新的光场调控自由度在超大容量光通信、旋转体探测、高分辨率成像、光信息存储、量子技术等前沿领域展现出巨大的应用潜力。在上述应用中,实现快速、高精度的OAM模态感知十分重要。随着人工智能(AI)在各领域的快速发展,将AI技术作为光束OAM模态感知的新型解决方案引起了国内外学者的广泛关注。本文从AI的应用模型角度出发,对近年来基于AI技术的光束OAM模态感知方法进行了系统性综述,主要包括机器学习、深度学习及混合学习模型下的OAM模式分布探测和多模混合光束谱测量,同时讨论了扰动下基于AI的OAM模态感知方法研究进展。
Research Progress in Orbital Angular Momentum Recognition for Laser Beams Based on Artificial Intelligence(Invited)
Significance Orbital angular momentum(OAM)offers a new degree of freedom for laser beams.The OAM beam has caught considerable attention in recent years due to its high-dimensional properties,demonstrating tremendous potential in cutting-edge fields such as super-capacity optical communication,rotational sensing,high-resolution imaging,optical information storage,and quantum technologies.The ability to diagnose OAM rapidly and precisely is crucial in these applications,involving OAM mode recognition and OAM spectral measurement.With the rapid development of artificial intelligence(AI)across various domains,leveraging AI technology has been considered a novel solution to OAM recognition.We review recent advances in OAM recognition based on AI technology from the perspective of AI model classification,with a focus on highlighting the research progress made by our team in this field.Additionally,we also discuss recent studies on AI-based OAM diagnosis under various disturbing scenarios.Progress Our review consists of three main sections.The first section provides a comprehensive overview of AI classifications,encompassing machine learning models,deep learning models,and hybrid learning models.It presents the fundamental characteristics of each category,providing relative information about the specific models of AI technology proposed in our study and numerical methods adopted in the hybrid learning models.Then,the basic OAM recognition principles are introduced,including the theory of identifying OAM modes within superposed OAM beams and the measurement of the constituent proportion coefficients for each mode,such as the OAM spectrum.This section serves as a foundational framework to provide readers with a thorough understanding of AI classifications and lay the groundwork for the subsequent review of OAM recognition.In the second section,a systematic review of AI-based OAM recognition schemes is presented to discuss the schemes from the perspective of AI-based model classification.Previous studies are categorized based on the employed model types of machine learning models(Fig.1),deep learning models(Fig.2),and hybrid learning models(Fig.3).We provide a comprehensive overview of previous approaches,analyze their strengths,and summarize the development trends.Additionally,we also concentrate on the contributions made by our team.Drawing inspiration from the powerful data processing capabilities of deep learning,we propose an adjusted ENN deep-learning model for OAM spectral measurement.A specially designed phase-only diffraction optical element is adopted to extract OAM features from the superposed OAM beam,and the neural network training is utilized to analyze the diffraction pattern to calculate the OAM spectrum.Under scenarios with seven superposed OAM modes,the OAM spectral measurement yields a root mean square(RMS)error as low as 10-6.Furthermore,we propose a deep residual network(DRN)-based deep learning methodology to analyze the complex spectrum of a superposed OAM beam.The methodology can process up to 50 overlapping OAM modes within the range of[-150,150],demonstrating exceptional performance with RMS errors reaching 0.002 for intensity spectra and 0.016 for phase spectra.Notably,the computational speed is significantly enhanced,reducing the processing time to mere 0.02 s.This remarkable improvement represents a nearly thousandfold increase in processing time compared to traditional helical harmonic expansion.Additionally,a scheme to directly emit multi-partite non-separable states from a laser cavity is proposed in another study,where we leverage a DRN to extract the phase shifting from interference patterns and thus measure the fidelity of classical non-separability.The groundbreaking research lays the foundation for related state tomography endeavors,underscoring that AI technology can validate classical non-separable characteristics among degrees of freedom like OAM.The third section presents the recent advances in AI-based OAM recognition schemes under disturbances.It is recognized that the OAM beam can be distorted by disturbances during transmission,especially in non-uniform media such as the atmosphere and oceanic turbulences.However,in applications like optical communication and radar detection,it is essential to acquire the original emitted optical field information.Previous studies mitigate the influence of disturbances by introducing adaptive optics.Subsequent analysis and processing are then adopted to restore the original emitted optical field information.With the emergence of AI-based OAM recognition,leveraging AI technology to establish implicit representations between laser fields before and after disturbances holds the potential to provide a novel approach for obtaining the original optical information directly from distorted OAM beams.Additionally,we provide a summary of AI-based OAM modal sensing methods under disturbances,categorizing the discussions based on disturbance factors and utilization scenarios.Among these methodologies,our team demonstrated an AI-based distortion correction technique for vector vortex beams in 2020.The TACCNN network is designed and proposed for learning the mapping relationship between the intensity distribution of distorted vector vortex beams and the turbulent phase,which facilitates rapid and precise compensation.Notably,with a turbulence intensity parameter(D/r0)of 5.28,this technique yields remarkable enhancement in mode purity which elevates from 19%to 70%.Conclusions and Prospects Leveraging the powerful computational and learning capabilities of AI technology allows us to extract information from more complex OAM superposed modes,and accelerate data processing.The AI-based OAM recognition method stimulates breakthroughs in high-dimensional OAM control technology in fields such as communication and lasers.Despite initial success in detecting OAM modes,challenges persist in the rapid and high-precision computation and analysis of wide-mode-range OAM control,such as OAM combs and optical spatio-temporal vortices.The introduction of AI technology is expected to overcome the efficiency and accuracy limitations in traditional methods,as the complex phase structure design and extensive data analysis involved in high-dimensional OAM tailoring are aligned with the AI capability.Finally,we hope this review will provide valuable insights for people who are interested in AI-based OAM recognition and its applications,and inspire more novel and remarkable ideas.

orbital angular momentumartificial intelligencemode recognitionspectral measurement

周诗韵、王亦舒、杨觐瑜、高春清、付时尧

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北京理工大学光电学院,北京 100081

信息光子技术工业和信息化部重点实验室,北京 100081

光电成像技术与系统教育部重点实验室,北京 100081

轨道角动量 人工智能 模式识别 谱测量

国家重点研发计划国家自然科学基金国家自然科学基金国家自然科学基金国家自然科学基金国防基础科研计划北京市自然科学基金

2022YFB360770062350011623750141183400161905012JCKY2020602C0071232031

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(14)
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