YOLO performance analysis for real-time detection of soybean pests

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-02-01 DOI:10.1016/j.atech.2024.100405
Everton Castelão Tetila , Fábio Amaral Godoy da Silveira , Anderson Bessa da Costa , Willian Paraguassu Amorim , Gilberto Astolfi , Hemerson Pistori , Jayme Garcia Arnal Barbedo
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Abstract

In this work, we evaluated the You Only Look Once (YOLO) architecture for real-time detection of soybean pests. We collected images of the soybean plantation in different days, locations and weather conditions, between the phenological stages R1 to R6, which have a high occurrence of insect pests in soybean fields. We employed a 5-fold cross-validation paired with four metrics to evaluate the classification performance and three metrics to evaluate the detection performance. Experimental results showed that YOLOv3 architecture trained with a batch size of 32 leads to higher classification and detection rates compared to batch sizes of 4 and 16. The results indicate that the evaluated architecture can support specialists and farmers in monitoring the need for pest control action in soybean fields.

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实时检测大豆害虫的 YOLO 性能分析
在这项工作中,我们评估了用于实时检测大豆害虫的 "只看一次"(YOLO)架构。我们收集了大豆种植园在不同天数、地点和天气条件下的图像,时间介于大豆田害虫高发的物候期 R1 到 R6 之间。我们采用了 5 倍交叉验证,用四个指标评估分类性能,用三个指标评估检测性能。实验结果表明,与批量大小为 4 和 16 的算法相比,使用批量大小为 32 的算法训练的 YOLOv3 架构具有更高的分类率和检测率。结果表明,所评估的架构可为专家和农民提供支持,帮助他们监测大豆田中是否需要采取虫害防治行动。
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