Investigation of Deep Learning Approaches for Identification of Important Wheat Pests in Central Anatolia

Tolga HAYIT, Sadık Eren KÖSE
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Abstract

Artificial intelligence-based systems play a crucial role in Integrated Pest Management studies. It is important to develop and support such systems for controlling wheat pests, which cause significant losses in wheat production which is strategic importance, particularly in Turkey. This study employed various pre-trained deep learning approaches to identify key wheat pests in the Central Anatolia Region, namely Aelia spp., Anisoplia spp., Eurygaster spp., Pachytychius hordei, and Zabrus spp. The models' classification success was determined using open and original datasets. Among the models, the ResNet-18 model outperformed others, achieving a classification success rate of 99%. Furthermore, each model was tested with original images collected during field studies to assess their effectiveness. The results demonstrate that pre-trained deep learning models can be utilized for the identification of important wheat pests in Central Anatolia as part of Integrated Pest Management.
中部安纳托利亚地区小麦重要害虫识别的深度学习方法研究
基于人工智能的系统在害虫综合治理研究中起着至关重要的作用。重要的是要发展和支持这种控制小麦害虫的系统,因为害虫对小麦生产造成重大损失,具有重要的战略意义,特别是在土耳其。本研究采用多种预训练的深度学习方法对中部安纳托利亚地区的小麦主要害虫Aelia spp、Anisoplia spp、Eurygaster spp、Pachytychius hordei和Zabrus spp进行分类,并利用开放和原始数据集确定模型的分类成功率。在这些模型中,ResNet-18模型表现优异,分类成功率达到99%。此外,每个模型都用实地研究中收集的原始图像进行了测试,以评估其有效性。结果表明,预先训练的深度学习模型可用于识别安纳托利亚中部重要的小麦害虫,作为害虫综合管理的一部分。
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