Xu Laixiang, Duan Yiru, Cai Zhaopeng, Huang Wenwen, Zhai Fengyan, Zhao Junmin
School of Computer and Data Science, Henan University of Urban Construction, Pingdingshan, China.
School of Computer and Data Science, Research Center of Smart City and Big Data Engineering of Henan Province, Henan University of Urban Construction, Pingdingshan, China.
Front Plant Sci. 2025 Aug 28;16:1642453. doi: 10.3389/fpls.2025.1642453. eCollection 2025.
Pea is a nutrient-dense, functionally diversified vegetable. However, its leaf diseases have a direct impact on yield and quality. Most approaches for identifying pea leaf diseases exhibit low feature extraction efficiency, significant environmental sensitivity, and limited large-scale applications, making it impossible to meet the expectations of modern agriculture for accuracy, real-time processing, and low cost.
Therefore, we propose a deep learning model for pea leaf disease identification based on an improved MobileNet-V3_small, deformable convolution strategy, self-attention, and additive attention mechanisms (DSA-Net). First, a deformable convolution is added to MobileNet-V3-small to increase the modeling skills for geometric changes in disease features. Second, a self-attention mechanism is integrated to improve the ability to recognize global features of complex diseases. Finally, an additive attention strategy to enhance the feature channel and spatial position response relationship in edge-blurred lesion areas. The experimental pea leaf data set consists of 7915 samples divided into five categories. It includes one healthy leaf and four diseases: brown spot, leaf miner, powdery mildew, and root rot.
The experimental results indicate that the suggested DSA-Net has an average recognition accuracy of 99.12%. It has a parameter size of 1.48M.
The proposed approach will help with future edge device deployments. The current proposed technique considerably enhances the diagnostic accuracy of pea leaf diseases and has significant promotion and application potential in agriculture.
豌豆是一种营养丰富、功能多样的蔬菜。然而,其叶部病害直接影响产量和品质。大多数识别豌豆叶部病害的方法特征提取效率低、对环境敏感性高且大规模应用受限,无法满足现代农业对准确性、实时处理和低成本的期望。
因此,我们提出了一种基于改进的MobileNet-V3_small、可变形卷积策略、自注意力和加法注意力机制(DSA-Net)的豌豆叶部病害识别深度学习模型。首先,在MobileNet-V3-small中添加可变形卷积,以提高对病害特征几何变化的建模能力。其次,集成自注意力机制,以提高对复杂病害全局特征的识别能力。最后,采用加法注意力策略,增强边缘模糊病变区域的特征通道和空间位置响应关系。实验豌豆叶数据集由7915个样本组成,分为五类。包括一片健康叶片和四种病害:褐斑病、潜叶蝇、白粉病和根腐病。
实验结果表明,所提出的DSA-Net平均识别准确率为99.12%。其参数大小为1.48M。
所提出的方法将有助于未来边缘设备的部署。当前提出的技术显著提高了豌豆叶部病害的诊断准确率,在农业领域具有显著的推广和应用潜力。