Sultan Tofayet, Chowdhury Mohammad Sayem, Jahan Nusrat, Mridha M F, Alfarhood Sultan, Safran Mejdl, Che Dunren
Department of Computer Science American International University-Bangladesh Dhaka Bangladesh.
Department of Computer Science College of Computer and Information Sciences, King Saud University Riyadh Saudi Arabia.
Plant Direct. 2025 Feb 12;9(2):e70047. doi: 10.1002/pld3.70047. eCollection 2025 Feb.
The health and productivity of plants, particularly those in agricultural and horticultural industries, are significantly affected by timely and accurate disease detection. Traditional manual inspection methods are labor-intensive, subjective, and often inaccurate, failing to meet the precision required by modern agricultural practices. This research introduces an innovative deep transfer learning method utilizing an advanced version of the Xception architecture, specifically designed for identifying plant diseases in roses, mangoes, and tomatoes. The proposed model introduces additional convolutional layers following the base Xception architecture, combined with multiple trainable dense layers, incorporating advanced regularization and dropout techniques to optimize feature extraction and classification. This architectural enhancement enables the model to capture complex, subtle patterns within plant leaf images, contributing to more robust disease identification. A comprehensive dataset comprising 5491 images across four distinct disease categories was employed for the training, validation, and testing of the model. The experimental results showcased outstanding performance, achieving 98% accuracy, 99% precision, 98% recall, and a 98% F1-score. The model outperformed traditional techniques as well as other deep learning-based methods. These results emphasize the potential of this advanced deep learning framework as a scalable, efficient, and highly accurate solution for early plant disease detection, providing substantial benefits for plant health management and supporting sustainable agricultural practices.
植物的健康状况和生产力,尤其是农业和园艺行业中的植物,会受到及时准确的病害检测的显著影响。传统的人工检查方法劳动强度大、主观且往往不准确,无法满足现代农业实践所需的精度要求。本研究引入了一种创新的深度迁移学习方法,该方法利用了Xception架构的高级版本,专门设计用于识别玫瑰、芒果和番茄中的植物病害。所提出的模型在基础Xception架构之后引入了额外的卷积层,并结合多个可训练的全连接层,融入了先进的正则化和随机失活技术,以优化特征提取和分类。这种架构增强使模型能够捕捉植物叶片图像中的复杂细微模式,有助于更稳健地识别病害。一个包含四个不同病害类别的5491张图像的综合数据集被用于模型的训练、验证和测试。实验结果展示了出色的性能,准确率达到98%,精确率达到99%,召回率达到98%,F1分数达到98%。该模型优于传统技术以及其他基于深度学习的方法。这些结果强调了这种先进的深度学习框架作为早期植物病害检测的可扩展、高效且高度准确的解决方案的潜力,为植物健康管理带来了巨大益处,并支持可持续农业实践。