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Full-stokes photodetector based on neural networks
Modern Applied Optics | 更新时间:2025-05-27
    • Full-stokes photodetector based on neural networks

    • In the field of full Stokes detection, researchers have proposed a polarization detector based on graphene metal nanoantennas, which utilizes vector photocurrent on graphene and neural network methods to achieve spatiotemporal consistent detection of full Stokes parameters, providing new ideas for integrated and miniaturized detection.
    • Optics and Precision Engineering   Vol. 33, Issue 7, Pages: 1042-1050(2025)
    • DOI:10.37188/OPE.20253307.1042    

      CLC: TN967.2;U666.1
    • CSTR:32169.14.OPE.20253307.1042    
    • Received:11 January 2025

      Revised:10 February 2025

      Published:10 April 2025

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  • WANG Shoutong,ZHANG Ran,CHU Jinkui,et al.Full-stokes photodetector based on neural networks[J].Optics and Precision Engineering,2025,33(07):1042-1050. DOI: 10.37188/OPE.20253307.1042. CSTR: 32169.14.OPE.20253307.1042.

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