Evaluation of Convolutional and Transformer-Based Detectors for Weed Detection in Tomato Plantations 文章

ArXiv CS.CV2026-05-26NEWSen作者: Alcides Toledo Espinosa, Gerardo Antonio \'Alvarez Hern\'andez, \'Angel Eduardo Zamora-Su\'arez, Miguel Bola\~nos, Juan Irving V\'asquez

摘要

arXiv:2605.00908v2 Announce Type: replace Abstract: This paper presents a comparative evaluation of convolutional and transformer-based object detection architectures for early weed detection in tomato plantations. Representative models from each paradigm are considered, including YOLOv26-nano, a recent variant of the YOLO family, and RT-DETR Large and RF-DETR Medium as transformer-based architectures. The evaluation was conducted on the GROUNDBASED_WEED dataset, considering six weed classes and an additional category corresponding to unidentified plants, which allowed for the assessment of performance in terms of detection accuracy and computational efficiency using metrics such as precision, recall, average precision, and inference speed, as well as non-parametric statistical tests.