Full Spectral Image Encryption in the Infrared using an Electrically Reconfigurable Metasurface and a Matched Detector

ADVANCED PHOTONICS RESEARCH(2024)

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摘要
The ability of metasurfaces to manipulate optical waves in the spatial and spectral domain provides new avenues for secure data storage. In this work, an encryption system consisting of an electrically tunable metasurface and a matched detector is presented for secure encryption of grayscale images in the 8-12 mu m wavelength range. In the proposed scheme, the encrypted image corresponds to the spatially varying thermal intensity of the metasurface as captured by its matched detector. In contrast to previous metasurface-based encryption schemes, the current approach leverages the full spectral response of the associated photonic devices to achieve secure encryption while circumventing the need for an increased device size. Using examples of single- and multi-image encryption, it is shown that the optical properties of either the metasurface or matched detector alone do not reveal any meaningful information about the encrypted image, thereby validating the security of the proposed scheme. The electrical tunability of the metasurface provides additional security as the image can only be retrieved by operating it at a predefined voltage level. The results presented in this study provide intriguing possibilities for the development of compact and secure object tagging and anti-counterfeiting applications in the infrared. This work presents an encryption system consisting of an electrically tunable metasurface and a matched detector for encryption of grayscale images in the 8-12 mu m wavelength range. The security of the proposed system is numerically validated through examples of both single- and multi-image encryption. The results presented in this study suggest intriguing implications for anticounterfeiting applications in the infrared.image (c) 2023 WILEY-VCH GmbH
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关键词
anti-counterfeiting,cryptography,image encryption,infrared,metamaterials
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