Parashar Nidhi, Johri Prashant, Elbeltagi Ahmed, Salem Ali, Choudhary Prakash, Kumar Vijay, Agrawal Tarun
School of Computer Science and Engineering , Galgotias University, Noida, Uttar Pradesh, 201308, India.
School of Computer Application and Technology, Galgotias University, Noida, Uttar Pradesh, 201308, India.
Sci Rep. 2025 Aug 12;15(1):29452. doi: 10.1038/s41598-025-14726-1.
Disease classification in maize plant is necessary for immediate treatment to enhance agricultural production and assure global food sustainability. Recent advancements in deep learning, specifically convolutional neural networks, have shown outstanding potential for image classification. This study presents Maize Net, a convolutional neural network model that precisely identifies diseases in maize leaves. Maize Net uses an attention mechanism to increase the model's efficiency by focusing on the relevant features and residual learning to improve the gradient flow. This also addresses the vanishing gradient problem while training deeper neural networks. A five-fold cross-validation test is conducted for generalization across the dataset, generating five models based on distinct training and testing sets. The macro-average of all evaluation metrics is considered to address the dataset's class imbalance problem. Maize Net achieved an average F1-score of 0.9509, recall of 0.9497, precision of 0.9525, and classification accuracy of 0.9595. These outcomes demonstrate MaizeNet's robustness and reliability in automated plant disease classification.
玉米植株疾病分类对于及时治疗以提高农业产量和确保全球粮食可持续性至关重要。深度学习领域的最新进展,特别是卷积神经网络,在图像分类方面展现出了卓越的潜力。本研究提出了玉米网络(Maize Net),这是一种卷积神经网络模型,能够精确识别玉米叶片中的疾病。玉米网络使用注意力机制,通过聚焦相关特征来提高模型效率,并采用残差学习来改善梯度流。这在训练更深层次的神经网络时也解决了梯度消失问题。为了在整个数据集上进行泛化,进行了五折交叉验证测试,基于不同的训练集和测试集生成了五个模型。考虑所有评估指标的宏平均来解决数据集的类不平衡问题。玉米网络的平均F1分数为0.9509,召回率为0.9497,精确率为0.9525,分类准确率为0.9595。这些结果证明了玉米网络在植物疾病自动分类中的稳健性和可靠性。