Deep Learning Enabled Transmission of Full-Stokes Polarization Images Through Complex Media

IF 10 1区 物理与天体物理 Q1 OPTICS
Davide Pierangeli, Giovanni Volpe, Claudio Conti
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引用次数: 0

Abstract

Polarization images offer crucial functionalities across multiple scientific domains, providing access to physical information beyond conventional measures such as intensity, phase, and spectrum of light. However, the challenge of transmitting polarization images through complex media has restricted their application in optical communication and imaging. Here, a novel approach utilizing deep learning for the transmission of full-Stokes polarization images through scattering media is presented. It is demonstrated that any input polarization image can be reconstructed in a single shot by employing only an intensity sensor. By supervised training of a deep neural network, high-accuracy full-Stokes reconstruction is achieved from the speckle pattern detected by an intensity camera. Leveraging the deep learning based polarization decoder, a polarization-colored encoding scheme is devised to enable increased-capacity data transmission through disordered channels. Fast, wavelength-independent, on-chip, polarization imaging in complex media enables the utilization of polarization-structured light in multimode fibres and opaque materials, unlocking new possibilities in optical communication, cryptography, and quantum technology.

Abstract Image

Abstract Image

深度学习支持通过复杂介质传输全斯托克斯偏振图像
偏振图像为多个科学领域提供了重要的功能,使人们能够获取光强度、相位和光谱等传统测量方法之外的物理信息。然而,通过复杂介质传输偏振图像所面临的挑战限制了它们在光通信和成像领域的应用。本文介绍了一种利用深度学习通过散射介质传输全斯托克斯偏振图像的新方法。实验证明,只需使用一个强度传感器,就能在一次拍摄中重建任何输入的偏振图像。通过对深度神经网络进行监督训练,可以从强度相机检测到的斑点模式中实现高精度的全斯托克斯重建。利用基于深度学习的偏振解码器,设计出一种偏振彩色编码方案,从而通过无序信道实现更大容量的数据传输。在复杂介质中进行快速、不受波长影响的片上偏振成像,可在多模光纤和不透明材料中利用偏振结构光,为光通信、密码学和量子技术带来新的可能性。
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来源期刊
CiteScore
14.20
自引率
5.50%
发文量
314
审稿时长
2 months
期刊介绍: Laser & Photonics Reviews is a reputable journal that publishes high-quality Reviews, original Research Articles, and Perspectives in the field of photonics and optics. It covers both theoretical and experimental aspects, including recent groundbreaking research, specific advancements, and innovative applications. As evidence of its impact and recognition, Laser & Photonics Reviews boasts a remarkable 2022 Impact Factor of 11.0, according to the Journal Citation Reports from Clarivate Analytics (2023). Moreover, it holds impressive rankings in the InCites Journal Citation Reports: in 2021, it was ranked 6th out of 101 in the field of Optics, 15th out of 161 in Applied Physics, and 12th out of 69 in Condensed Matter Physics. The journal uses the ISSN numbers 1863-8880 for print and 1863-8899 for online publications.
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