The use of artificial intelligence to identify objects in a construction site
Ver/
Descargar
(application/pdf: 704.3Kb)
(application/pdf: 704.3Kb)
Fecha
2021Autor(es)
Metadatos
Mostrar el registro completo del ítemResumen
The construction industry invests a large amount of effort and resources in construction processes such as the follow-up, control, and monitoring of construction works, which, compared to other areas, present a low level of automation. Thus, increasing automation would reduce the times and costs of such activities. This research aims to evaluate a computer vision technique to identify objects of interest in construction sites, from videos and images of drones and static surveillance cameras. The "You Look Only Once" (YOLO) object detection neural network was used to identify eight classes of objects in 1000 drone images and 1046 static camera images of a construction site, achieving an accuracy varying between 78.8% to 82.8% and 73.56% to 93.76%, respectively. The feasibility of using classification algorithms to identify complex objects such as trucks and cranes was verified. Its application can be extended to various other forms to have an intelligent and automated
process of monitoring and control project construction activities.
Cómo citar
Almeida Del Savio, A., Luna, A., Cárdenas-Salas, D., Vergara Olivera, M. & Urday Ibarra, G. (2021). The use of artificial intelligence to identify objects in a construction site. International Conference on Artificial Intelligence and Energy System (ICAIES) in Virtual Mode, Jaipur, India. http://doi.org/10.26439/ulima.prep.14933Editor
Universidad de LimaCategoría / Subcategoría
Pendiente / PendienteTemas
Recurso(s) relacionado(s)
https://doi.org/10.26439/ulima.datasets.13359Nota
Artículo presentado en el International Conference on Artificial Intelligence and Energy System (ICAIES-2021) in Virtual Mode, llevada a cabo el 12 y 13 de junio del 2021. Los datos de investigación están disponibles en la siguiente dirección https://doi.org/10.26439/ulima.datasets.13359
Coleccion(es)
- Ingeniería Civil [11]
El ítem tiene asociados los siguientes ficheros de licencia: