Shaikh Istiyak Mudassir, Akhtar Mohammad Nishat, Aabid Abdul, Ahmed Omar Shabbir
School of Aerospace Engineering, Universiti Sains Malaysia, 14300 Nibong Tebal, Penang, Malaysia.
Department of Engineering Management, College of Engineering, Prince Sultan University, PO BOX 66833, Riyadh 11586, Saudi Arabia.
Biotechnol Rep (Amst). 2024 Aug 30;44:e00853. doi: 10.1016/j.btre.2024.e00853. eCollection 2024 Dec.
The You Only Look Once (YOLO) deep learning model iterations-YOLOv7-YOLOv8-were put through a rigorous evaluation process to see how well they could recognize oil palm plants. Precision, recall, F1-score, and detection time metrics are analyzed for a variety of configurations, including YOLOv7x, YOLOv7-W6, YOLOv7-D6, YOLOv8s, YOLOv8n, YOLOv8m, YOLOv8l, and YOLOv8x. YOLO label v1.2.1 was used to label a dataset of 80,486 images for training, and 482 drone-captured images, including 5,233 images of oil palms, were used for testing the models. The YOLOv8 series showed notable advancements; with 99.31 %, YOLOv8m obtained the greatest F1-score, signifying the highest detection accuracy. Furthermore, YOLOv8s showed a notable decrease in detection times, improving its suitability for comprehensive environmental surveys and in-the-moment monitoring. Precise identification of oil palm trees is beneficial for improved resource management and less environmental effect; this supports the use of these models in conjunction with drone and satellite imaging technologies for agricultural economic sustainability and optimal crop management.
对“你只看一次”(YOLO)深度学习模型的迭代版本——YOLOv7至YOLOv8——进行了严格的评估过程,以了解它们识别油棕树的能力如何。针对多种配置分析了精确率、召回率、F1分数和检测时间指标,这些配置包括YOLOv7x、YOLOv7-W6、YOLOv7-D6、YOLOv8s、YOLOv8n、YOLOv8m、YOLOv8l和YOLOv8x。使用YOLO标签v1.2.1对一个包含80486张图像的数据集进行标注以用于训练,并使用482张无人机拍摄的图像(包括5233张油棕树图像)来测试这些模型。YOLOv8系列表现出显著的进步;YOLOv8m的F1分数最高,为99.31%,这意味着其检测精度最高。此外,YOLOv8s的检测时间显著减少,提高了其适用于全面环境调查和实时监测的能力。精确识别油棕树有利于改善资源管理并减少环境影响;这支持将这些模型与无人机和卫星成像技术结合使用,以实现农业经济可持续性和优化作物管理。