INTELIGENCIA ARTIFICIAL Y SUS HERRAMIENTAS EN EL CONTROL DE PLAGAS PARA LA PRODUCCIÓN AGRÍCOLA: UNA REVISIÓN

Autores/as

DOI:

https://doi.org/10.47820/recima21.v5i5.5277

Palabras clave:

Agronegocios. CNN. Procesamiento de imágenes. Agricultura inteligente. Plagas. Imagen.

Resumen

La inteligencia artificial y sus herramientas se están utilizando ampliamente en todo el mundo. Su uso en la agricultura está siendo ampliamente estudiado y ampliado, desde la precosecha hasta la poscosecha. El aumento de la población mundial ha desencadenado la necesidad de incrementar la producción de alimentos. Esta demanda desencadenó una búsqueda de soluciones que promuevan una mayor producción y calidad de los alimentos. Una forma de lograr este objetivo es el control de plagas. La inteligencia artificial y sus herramientas han demostrado ser una solución cada vez mayor para controlar y combatir las plagas. Esta investigación se centra en revisar y demostrar avances en el combate y control de plagas, utilizando herramientas e imágenes de inteligencia artificial. Se destacan actividades como clasificación de plagas, identificación de insectos, uso y captura de imágenes por UAV, además del uso de aprendizaje profundo y red neuronal convolucional. El estudio presenta el uso actual de la inteligencia artificial, el aprendizaje automático y el aprendizaje profundo, identificando las herramientas en uso y las soluciones propuestas o desarrolladas para combatir y controlar las plagas. Esta investigación sirve como base para abordar los desafíos futuros relacionados con el uso de la inteligencia artificial y sus herramientas en la identificación de plagas en imágenes reales, brindando conocimientos a los investigadores interesados ​​en desarrollar estudios sobre el uso del aprendizaje profundo en la agricultura.

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Biografía del autor/a

Maria Eloisa Mignoni

Universidade do Estado de Mato Grosso Carlos Alberto Reyes Maldonado - Unemat.

Emiliano Soares Monteiro

Universidade do Estado de Mato Grosso Carlos Alberto Reyes Maldonado - Unemat.

Cesar Zagonel

Universidade Cruzeiro do Sul - UNICSUL.

Rafael Kunst, Unisinos

Universidade do Vale do Rio dos Sinos - Unisinos.

Citas

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27/05/2024

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Mignoni, M. E., Soares Monteiro, E., Zagonel, C., & Kunst, R. (2024). INTELIGENCIA ARTIFICIAL Y SUS HERRAMIENTAS EN EL CONTROL DE PLAGAS PARA LA PRODUCCIÓN AGRÍCOLA: UNA REVISIÓN. RECIMA21 - Revista Científica Multidisciplinar - ISSN 2675-6218, 5(5), e555277. https://doi.org/10.47820/recima21.v5i5.5277