How efficient deep-learning object detectors are?
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Damián Fernández-Cerero | Francisco J. Ortega | Juan Antonio Álvarez | Francisco Velasco Morente | Luis Miguel Soria-Morillo | F. J. Ortega | L. M. Soria-Morillo | Juan Antonio Álvarez-García | Fran Morente | Damián Fernández-Cerero
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