DeepNIS: Deep Neural Network for Nonlinear Electromagnetic Inverse Scattering
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Lianlin Li | Tie Jun Cui | Fernando L. Teixeira | Arye Nehorai | Che Liu | Long Gang Wang | T. Cui | Lianlin Li | A. Nehorai | F. Teixeira | Longgang Wang | Che Liu
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