Özaras Özge Nur, Günay Yılmaz Asuman
Faculty of Technology, Department of Software Engineering, Karadeniz Technical University, Trabzon, Turkey.
Faculty of Engineering, Department of Artificial Intelligence and Data Engineering, Karadeniz Technical University, Trabzon, Turkey.
PeerJ Comput Sci. 2025 Jun 16;11:e2941. doi: 10.7717/peerj-cs.2941. eCollection 2025.
Humans need food to sustain their lives. Therefore, agriculture is one of the most important issues in nations. Agriculture also plays a major role in the economic development of countries by increasing economic income. Early diagnosis of plant diseases is crucial for agricultural productivity and continuity. Early disease detection directly impacts the quality and quantity of crops. For this reason, many studies have been carried out on plant leaf disease classification. In this study, a simple and effective leaf disease classification method was developed. Disease classification was performed using seven state-of-the-art pretrained convolutional neural network architectures: VGG16, ResNet50, SqueezeNet, Xception, ShuffleNet, DenseNet121 and MobileNetV2. A simplified SqueezeNet model, GAPNet, was subsequently proposed for grape, apple and potato leaf disease classification. GAPNet was designed to be a lightweight and fast model with 337.872 parameters. To address the data imbalance between classes, oversampling was carried out using the synthetic minority oversampling technique. The proposed model achieves accuracy rates of 99.72%, 99.53%, and 99.83% for grape, apple and potato leaf disease classification, respectively. A success rate of 99.64% was achieved in multiplant leaf disease classification when the grape, apple and potato datasets were combined. Compared with the state-of-the-art methods, the lightweight GAPNet model produces promising results for various plant species.
人类需要食物来维持生命。因此,农业是各国最重要的问题之一。农业通过增加经济收入,在各国的经济发展中也发挥着重要作用。植物病害的早期诊断对于农业生产力和可持续性至关重要。早期病害检测直接影响作物的质量和产量。出于这个原因,已经开展了许多关于植物叶片病害分类的研究。在本研究中,开发了一种简单有效的叶片病害分类方法。使用七种最先进的预训练卷积神经网络架构进行病害分类:VGG16、ResNet50、SqueezeNet、Xception、ShuffleNet、DenseNet121和MobileNetV2。随后提出了一种简化的SqueezeNet模型GAPNet,用于葡萄、苹果和马铃薯叶片病害分类。GAPNet被设计为一个轻量级且快速的模型,有337872个参数。为了解决类间数据不平衡问题,使用合成少数过采样技术进行过采样。所提出的模型在葡萄、苹果和马铃薯叶片病害分类中分别达到了99.72%、99.53%和99.83%的准确率。当将葡萄、苹果和马铃薯数据集合并时,在多植物叶片病害分类中实现了99.64%的成功率。与最先进的方法相比,轻量级的GAPNet模型在各种植物物种上产生了有前景的结果。