A Comparative Study of Deep Learning Frameworks Applied to Coffee Plant Detection from Close-Range UAS-RGB Imagery in Costa Rica
Fecha de publicación
10-11-2024Autor
Arriola-Valverde, Sergio
Rimolo-Donadio, Renato
Villagra-Mendoza, Karolina
Chacón-Rodriguez, Alfonso
García-Ramirez, Ronny
Somarriba, Eduardo
Objetivos de desarrollo sostenible
ODS 9 - Industria, innovación e infraestructura
Tipo
Artículo
Metadatos
Mostrar el registro completo del ítemResumen
Introducing artificial intelligence techniques in agriculture offers new opportunities for
improving crop management, such as in coffee plantations, which constitute a complex agroforestry
environment. This paper presents a comparative study of three deep learning frameworks: Deep Forest, RT-DETR, and Yolov9, customized for coffee plant detection and trained from images with a high spatial resolution (cm/pix). Each frame had dimensions of 640 × 640 pixels acquired from passive RGB sensors onboard a UAS (Unmanned Aerial Systems) system. The image set was structured and consolidated from UAS-RGB imagery acquisition in six locations along the Central Valley, Costa Rica, through automated photogrammetric missions. It was evidenced that the RTDETR
and Yolov9 frameworks allowed adequate generalization and detection with mAP50 values
higher than 90% and mAP5095 higher than 54%, in scenarios of application with data augmentation
techniques. Deep Forest also achieved good metrics, but noticeably lower when compared to the
other frameworks. RT-DETR and Yolov9 were able to generalize and detect coffee plants in unseen
scenarios that include complex forest structures within tropical agroforestry Systems (AFS)
Palabras clave
Coffea||Coffea||Coffea||Coffea, Agricultura de precisión||precision agriculture||agriculture de précision, Manejo del cultivo||crop management||gestão da colheita||conduite de la culture, Imágen por satélite||satellite imagery||imagem por satélite||imagerie par satellite, Costa Rica||Costa Rica||Costa Rica||Costa Rica,
Representación
Sede Central
Editor
MDPI
Es parte de
Remote Sensing
Status
openAccess
URI enlace
https://doi.org/10.3390/rs16244617