Multiplexed orbital angular momentum beams demultiplexing using hybrid optical-electronic convolutional neural network
Jiachi Ye(University of Florida), Hamed Dalir(University of Florida), Mohammad‐Ali Miri(Queens College, CUNY), Zibo Hu, Volker J. Sorger(University of Florida), Qian Cai(University of Florida), Maria Solyanik‐Gorgone(George Washington University), Chandraman Patil(University of Florida), Navid Asadizanjani(University of Connecticut), Haoyan Kang(University of Florida), Hao Wang(University of Florida), Elham Heidari(University of Florida)
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