利用神经网络检测巨藻

A. Sava, L. Ichim, D. Popescu
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引用次数: 2

摘要

这篇论文的目标是建立一些基于神经网络的模型,用于从获取的树木图像中检测和分类生态果园中的昆虫,如Halyomorpha Halys。检测操作使用了该领域最有效的两个深度学习家族的模型:R-CNN和YOLO。利用所提出的模型(Faster R-CNN、YOLOv5-s、YOLOv5-m和YOLOv5-1)对果园有害昆虫进行早期检测,为预测果园危害提供了可能。该数据集由马里兰州生物多样性数据集的图像组成。所有的训练和测试操作都是在Google提供的GPU处理器的帮助下进行的,得到的模型保存在Google Drive Cloud上。基于精度、召回率和mAP等具体指标,从检测和分类角度对图像进行评估。YOLOv5-m的效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Halyomorpha Halys Using Neural Networks
The paper's goal was to create some neural networks-based models for the detection and classification of insects such as Halyomorpha Halys in ecological orchards, from acquired images in the trees. The detecting operations were performed using models from two of the most efficient deep learning families in this area: R-CNN and YOLO. Using the proposed models, (Faster R-CNN, YOLOv5-s, YOLOv5-m, and YOLOv5-1) to early detection of harmful insects, a real contribution to anticipating damage in orchards is possible. The dataset is composed of images taken from the Maryland Biodiversity dataset. All training and testing operations were performed with the help of GPU processors provided by Google, the resulting models being saved on Google Drive Cloud. The images were evaluated from the detection and the classification perspective based on specific metrics such as precision, recall, and mAP. The best results were obtained for YOLOv5-m.
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