Decision fusion-based system to detect two invasive stink bugs in orchards

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-24 DOI:10.1016/j.atech.2024.100548
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Abstract

Accurate and early detection of insect pests plays an important role in crop protection and pest management in agriculture, especially in orchards. This paper is focused on evaluating and improving the performance of insect detection algorithms by adopting an ensemble approach of artificial neural networks. A set of advanced object detection models including YOLOv8, Faster R-CNN, RetinaNet, SSD, and FCOS were selected, and the models were trained and evaluated on a common dataset representing digital images of different insect species pests. Two classes were considered represented by quite similar invasive stink bugs, Halyomorpha Halys and Nezara Viridula. These architectures were optimized to identify significant peculiarities and variations between reference insects, including size, shape, and color. Each model has been implemented and optimized to achieve the best possible performance before integrating into an ensemble system. By integrating the predictions of these models through a weighted ensemble mechanism that leverages the F1 Score of each model, a more performant global system was developed capable of detecting insect pests with improved performance over individual models. This significant improvement in insect detection highlights the potential of the proposed ensemble system in efficient and rapid insect pest identification, ultimately providing valuable opportunities for implementing crop monitoring technologies. The research highlights the importance of implementing and developing deep-learning technologies for solving specific challenges in agriculture and brings innovative ways of strategic pest management for sustainable agricultural practices.

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基于决策融合的系统检测果园中的两种入侵蝽象
在农业,特别是果园的作物保护和害虫管理中,准确和早期检测害虫起着重要作用。本文主要通过采用人工神经网络的集合方法来评估和改进昆虫检测算法的性能。本文选择了一组先进的物体检测模型,包括 YOLOv8、Faster R-CNN、RetinaNet、SSD 和 FCOS,并在代表不同昆虫种类害虫数字图像的通用数据集上对这些模型进行了训练和评估。其中两个类别被认为是非常相似的入侵蝽类,即 Halyomorpha Halys 和 Nezara Viridula。对这些架构进行了优化,以识别参考昆虫之间的显著特征和差异,包括大小、形状和颜色。每个模型都经过实施和优化,以达到最佳性能,然后再集成到一个集合系统中。通过利用每个模型的 F1 分数(F1 Score)的加权集合机制整合这些模型的预测结果,开发出了一个性能更强的全局系统,能够检测害虫,其性能比单个模型更强。昆虫检测能力的大幅提高凸显了建议的集合系统在高效、快速识别害虫方面的潜力,最终为作物监测技术的实施提供了宝贵的机会。这项研究强调了实施和开发深度学习技术对于解决农业领域具体挑战的重要性,并为可持续农业实践带来了战略性害虫管理的创新方法。
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