Técnicas de inteligencia artificial utilizadas en el procesamiento de imágenes y su aplicación en el análisis de pavimentos

Técnicas de inteligencia artificial utilizadas en el procesamiento de imágenes y su aplicación en el análisis de pavimentos

Contenido principal del artículo

Oscar Javier Reyes Ortiz
Marcela Mejia
Juan Sebastian Useche Castelblanco

Resumen

Debido al incremento en los costos de mantenimiento, rehabilitación y construcción de vías, estudiar las estructuras de pavimento para determinar su comportamiento y sus características mecánicas propias analizando la distribución y posición de sus partículas, se ha vuelto un campo de gran importancia en la ingeniería. Las nuevas herramientas de análisis buscan hacer este estudio más eficiente reduciendo su costo y tiempo de ejecución mediante el procesamiento digital de imágenes. El procesamiento digital tradicional está limitado en su sensibilidad ante perturbaciones externas que puedan modificar la imagen, por eso se han implementado diferentes técnicas de inteligencia artificial (IA) para optimizar los algoritmos. Este trabajo presenta una revisión de las diferentes aplicaciones de técnicas de IA recientes en el procesamiento de  imágenes. Después se revisan los trabajos realizados específicamente con imágenes de pavimentos y se proponen posibles aplicaciones para implementar en este campo con inteligencia artificial

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Detalles del artículo

Biografía del autor/a (VER)

Oscar Javier Reyes Ortiz, Universidad Militar Nueva Granada

Ingeniero Civil, PhD. Profesor titular del Programa de ingeniería civil, Grupo de investigación de Geotecnia, Universidad Militar Nueva Granada, Carrera 11 No 101-80, Bogotá D.C., Colombia

Marcela Mejia, Universidad Militar Nueva Granada

Ingeniera Electrónica, PhD. Profesora titular del programa de Ingeniería en Telecomunicaciones, Grupo de investigación TIGUM, Universidad Militar Nueva Granada, Carrera 11 No 101-80, Bogotá D.C., Colombia

Juan Sebastian Useche Castelblanco, Universidad Militar Nueva Granada

Ingeniero en Mecatrónica, actualmente adelanta estudios de maestria. Asistente de investigación, Grupo de investigación de Geotecnia, Universidad Militar Nueva Granada, Carrera 11 No 101-80, Bogotá D.C.

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