Nigam Sapna, Jain Rajni, Singh Vaibhav Kumar, Singh Ashish Kumar, Krishna Hari
Division of Computer Applications, Indian Council of Agricultural Research (ICAR)-Indian Agricultural Statistics Research Institute, New Delhi, India.
Division of Technology and Sustainable Agriculture, Indian Council of Agricultural Research (ICAR)-National Institute of Agricultural Economics and Policy Research, New Delhi, India.
Front Plant Sci. 2025 May 23;16:1540642. doi: 10.3389/fpls.2025.1540642. eCollection 2025.
Wheat rust is a severe fungal disease that significantly impacts wheat crops, resulting in substantial losses in quality and quantity, often exceeding 50%. Timely and early accurate estimation of disease severity in fields is critical for effective disease management. Early identification of Rust at low severity levels can facilitate prompt implementation of control measures, potentially saving crops. This paper introduces an automated wheat rust severity stage estimation model utilizing the EfficientNet architecture and attention mechanism. The convolutional Block Attention Module was integrated into EfficientNet-B0 in place of the SE module to enhance feature extraction by simultaneously considering channel and spatial information. The proposed hybrid approach aims to identify rust disease severity accurately. The model is trained on an image dataset comprising three major rust types-stripe, stem, leaf, and healthy plants captured under real-life field conditions. Each disease is categorized into four severity stages: healthy, low, medium, and high. Experimental results demonstrate that the proposed model achieves impressive performance, with a training accuracy of 99.51% and a testing accuracy of 96.68%. Moreover, comparative analysis against state-of-the-art CNN models highlights the superior performance of our approach. An Android application was also designed and developed to facilitate real-time classification of plant disease severity. This system incorporates a severity model optimized for enhanced classification accuracy and rapid recognition, ensuring efficient performance.
小麦锈病是一种严重的真菌病害,对小麦作物有重大影响,导致质量和产量大幅损失,损失率常常超过50%。及时且早期准确估计田间病害严重程度对于有效的病害管理至关重要。在低严重程度水平下早期识别锈病能够促进及时采取控制措施,有可能拯救作物。本文介绍了一种利用高效神经网络(EfficientNet)架构和注意力机制的小麦锈病严重程度阶段估计自动化模型。将卷积块注意力模块(Convolutional Block Attention Module)集成到EfficientNet - B0中以取代SE模块,通过同时考虑通道和空间信息来增强特征提取。所提出的混合方法旨在准确识别锈病严重程度。该模型在一个图像数据集上进行训练,该数据集包含在实际田间条件下拍摄的三种主要锈病类型——条锈病、秆锈病、叶锈病以及健康植株。每种病害分为四个严重程度阶段:健康、低、中、高。实验结果表明,所提出的模型取得了令人印象深刻的性能,训练准确率为99.51%,测试准确率为96.68%。此外,与最先进的卷积神经网络(CNN)模型的对比分析突出了我们方法的优越性能。还设计并开发了一个安卓应用程序,以促进植物病害严重程度的实时分类。该系统包含一个为提高分类准确率和快速识别而优化的严重程度模型,确保高效运行。