Low–High-Power Consumption Architectures for Deep-Learning Models Applied to Hyperspectral Image Classification
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Antonio Plaza | Javier Plaza | Mercedes Eugenia Paoletti | Sergio Bernabé | Juan M. Haut | Mercedes E. Paoletti | Ruben Fernandez-Beltran | J. M. Haut | A. Plaza | J. Plaza | S. Bernabé | R. Fernández-Beltran
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