Tanveer Muhammad Usama, Munir Kashif, Raza Ali, Abualigah Laith, Garay Helena, Gonzalez Luis Eduardo Prado, Ashraf Imran
Institute of Information Technology, Khwaja Fareed University of Engineering and Information Technology Rahim Yar Khan Pakistan.
Department of Software Engineering University of Lahore Lahore Pakistan.
Food Sci Nutr. 2025 Jan 2;13(1):e4655. doi: 10.1002/fsn3.4655. eCollection 2025 Jan.
Maize is a staple crop worldwide, essential for food security, livestock feed, and industrial uses. Its health directly impacts agricultural productivity and economic stability. Effective detection of maize crop health is crucial for preventing disease spread and ensuring high yields. This study presents VG-GNBNet, an innovative transfer learning model that accurately detects healthy and infected maize crops through a two-step feature extraction process. The proposed model begins by leveraging the visual geometry group (VGG-16) network to extract initial pixel-based spatial features from the crop images. These features are then further refined using the Gaussian Naive Bayes (GNB) model and feature decomposition-based matrix factorization mechanism, which generates more informative features for classification purposes. This study incorporates machine learning models to ensure a comprehensive evaluation. By comparing VG-GNBNet's performance against these models, we validate its robustness and accuracy. Integrating deep learning and machine learning techniques allows VG-GNBNet to capitalize on the strengths of both approaches, leading to superior performance. Extensive experiments demonstrate that the proposed VG-GNBNet+GNB model significantly outperforms other models, achieving an impressive accuracy score of 99.85%. This high accuracy highlights the model's potential for practical application in the agricultural sector, where the precise detection of crop health is crucial for effective disease management and yield optimization.
玉米是全球的主要作物,对粮食安全、牲畜饲料和工业用途至关重要。其健康状况直接影响农业生产力和经济稳定性。有效检测玉米作物的健康状况对于预防疾病传播和确保高产至关重要。本研究提出了VG-GNBNet,这是一种创新的迁移学习模型,通过两步特征提取过程准确检测健康和受感染的玉米作物。所提出的模型首先利用视觉几何组(VGG-16)网络从作物图像中提取基于像素的初始空间特征。然后使用高斯朴素贝叶斯(GNB)模型和基于特征分解的矩阵分解机制对这些特征进行进一步细化,从而生成更具信息性的特征用于分类。本研究纳入了机器学习模型以确保全面评估。通过将VG-GNBNet的性能与这些模型进行比较,我们验证了其鲁棒性和准确性。将深度学习和机器学习技术相结合使VG-GNBNet能够利用两种方法的优势,从而实现卓越的性能。大量实验表明,所提出的VG-GNBNet+GNB模型明显优于其他模型,达到了令人印象深刻的99.85%的准确率。如此高的准确率凸显了该模型在农业领域实际应用的潜力,在该领域中,精确检测作物健康状况对于有效的病害管理和产量优化至关重要。