Clayton FowlerSensong AnBowen ZhengHong TangHang LiWei GuoHualiang Zhang
This paper presents a deep learning approach for the inverse-design of metal-insulator-metal metasurfaces for hyperspectral imaging applications. Deep neural networks are able to compensate for the complex interactions between electromagnetic waves and metastructures to efficiently produce design solutions that would be difficult to obtain using other methods. Since electromagnetic spectra are sequential in nature, recurrent neural networks are especially suited for relating such spectra to structural parameters.
Clayton FowlerSensong AnBowen ZhengHong TangHang LiWei GuoHualiang Zhang
Jay R. SchwartzJ. KocjanDavid C. Driscoll
Liyin YuanWeiming XuZhiping HeYing‐Hsuan LinRong ShuJianyu Wang
Mads Nibe LarsenIben Hansen–BruhnAnders Løchte JørgensenBjarke JørgensenJakob Kjelstrup‐Hansen