Enhancing sustainability in the production of palm oil: creative monitoring methods using YOLOv7 and YOLOv8 for effective plantation management

Q1 Immunology and Microbiology Biotechnology Reports Pub Date : 2024-08-30 DOI:10.1016/j.btre.2024.e00853
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引用次数: 0

Abstract

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.

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提高棕榈油生产的可持续性:使用 YOLOv7 和 YOLOv8 进行有效种植园管理的创造性监测方法
我们对 "只看一眼"(YOLO)深度学习模型迭代--YOLOv7-YOLOv8--进行了严格的评估,以了解其识别油棕植物的能力。我们分析了各种配置的精度、召回率、F1 分数和检测时间指标,包括 YOLOv7x、YOLOv7-W6、YOLOv7-D6、YOLOv8s、YOLOv8n、YOLOv8m、YOLOv8l 和 YOLOv8x。YOLO label v1.2.1 用于标注80,486张图像的数据集以进行训练,482张无人机捕获的图像(包括5,233张油棕榈树图像)用于测试模型。YOLOv8 系列取得了显著的进步;YOLOv8m 的 F1 分数最高,达到 99.31%,代表了最高的检测精度。此外,YOLOv8s 的检测时间明显缩短,更加适用于综合环境调查和即时监测。精确识别油棕榈树有利于改善资源管理和减少环境影响;这支持将这些模型与无人机和卫星成像技术结合使用,以实现农业经济的可持续性和最佳作物管理。
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来源期刊
Biotechnology Reports
Biotechnology Reports Immunology and Microbiology-Applied Microbiology and Biotechnology
CiteScore
15.80
自引率
0.00%
发文量
79
审稿时长
55 days
期刊介绍: Biotechnology Reports covers all aspects of Biotechnology particularly those reports that are useful and informative and that will be of value to other researchers in related fields. Biotechnology Reports loves ground breaking science, but will also accept good science that can be of use to the biotechnology community. The journal maintains a high quality peer review where submissions are considered on the basis of scientific validity and technical quality. Acceptable paper types are research articles (short or full communications), methods, mini-reviews, and commentaries in the following areas: Healthcare and pharmaceutical biotechnology Agricultural and food biotechnology Environmental biotechnology Molecular biology, cell and tissue engineering and synthetic biology Industrial biotechnology, biofuels and bioenergy Nanobiotechnology Bioinformatics & systems biology New processes and products in biotechnology, bioprocess engineering.
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