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Terahertz spoof plasmonic neural network for diffractive information recognition and processing

Xinxin Gao, Ze Gu, Qian Ma, Bao Jie Chen, Kam Man Shum, Wen Yi Cui, Jian Wei You, Tie Jun Cui, Chi Hou Chan

2024Nature Communications38 citationsDOIOpen Access PDF

Abstract

All-optical diffractive neural networks, as analog artificial intelligence accelerators, leverage parallelism and analog computation for complex data processing. However, their low space transmission efficiency or large spatial dimensions hinder miniaturization and broader application. Here, we propose a terahertz spoof plasmonic neural network on a planar diffractive platform for direct multi-target recognition. Our approach employs a spoof surface plasmon polariton coupler array to construct a diffractive network layer, resulting in a compact, efficient, and easily integrable architecture. We designed three schemes: basis vector classification, multi-user recognition, and MNIST handwritten digit classification. Experimental results reveal that the terahertz spoof plasmonic neural network successfully classifies basis vectors, recognizes multi-user orientation information, and directly processes handwritten digits using a designed input framework comprising a metal grating array, transmitters, and receivers. This work broadens the application of terahertz plasmonic metamaterials, paving the way for terahertz on-chip integration, intelligent communication, and advanced computing systems.

Topics & Concepts

Terahertz radiationComputer sciencePlasmonMetamaterialArtificial neural networkMNIST databaseArtificial intelligenceNeuromorphic engineeringSurface plasmon polaritonElectronic engineeringPattern recognition (psychology)OptoelectronicsSurface plasmonMaterials scienceEngineeringNeural Networks and Reservoir ComputingPhotonic and Optical DevicesOptical Network Technologies