Influence of Wind Speed on RGB-D Images in Tree Plantations
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José Dorado | Angela Ribeiro | José M. Bengochea-Guevara | Jesus Conesa | César Fernández-Quintanilla | Dionisio Andújar | C. Fernández-Quintanilla | D. Andújar | J. Dorado | A. Ribeiro | J. Bengochea-Guevara | J. Conesa
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