Parez Sana, Alghamdi Norah Saleh, Mahmood Tahir, Ullah Waseem, Khan Muhammad Attique, Houda Taha, Dilshad Naqqash
Department of Software, Sejong University, Seoul, 05006, South Korea.
Department of Computer Sciences, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh, 11671, Saudi Arabia.
Sci Rep. 2025 Jul 1;15(1):20805. doi: 10.1038/s41598-025-08307-5.
Crop diseases and insect pests pose significant challenges to agricultural productivity, often resulting in considerable yield losses. Traditional pest recognition methods, which rely heavily on manual feature extraction, are not only time consuming and labor intensive but also lack robustness in diverse conditions. While deep learning (DL) models have improved performance over conventional approaches, they typically suffer from high computational demands and large model sizes, limiting their real-world applicability. This study proposes a novel and efficient DL-based framework for the accurate identification and classification of crop pests and diseases. The core of this approach integrates InceptionV3 as a backbone feature extractor to capture rich and discriminative features, enhanced further using a channel attention (CA) mechanism for feature refinement. To reduce model complexity and improve deployment feasibility, a metaheuristic optimization algorithm was incorporated that significantly reduces computational overhead without compromising performance. The proposed model was rigorously evaluated on the CropDP-181 dataset, outperforming several state-of-the-art methods in both classification accuracy and computational efficiency. Notably, the proposed method achieved a precision of 0.932, recall of 0.891, F1-score of 0.911, an overall accuracy of 88.50%, and an MCC of 0.816 demonstrating its effectiveness and practical potential in real-time agricultural monitoring systems.
农作物病虫害对农业生产力构成重大挑战,常常导致产量大幅损失。传统的害虫识别方法严重依赖人工特征提取,不仅耗时费力,而且在不同条件下缺乏鲁棒性。虽然深度学习(DL)模型比传统方法性能有所提升,但它们通常计算需求高、模型规模大,限制了其在现实世界中的适用性。本研究提出了一种新颖且高效的基于深度学习的框架,用于准确识别和分类农作物病虫害。该方法的核心集成了InceptionV3作为主干特征提取器,以捕获丰富且有区分性的特征,并进一步使用通道注意力(CA)机制进行特征细化。为了降低模型复杂度并提高部署可行性,引入了一种元启发式优化算法,该算法在不影响性能的情况下显著降低了计算开销。所提出的模型在CropDP - 181数据集上进行了严格评估,在分类准确率和计算效率方面均优于几种现有先进方法。值得注意的是,所提出的方法实现了0.932的精确率、0.891的召回率、0.911的F1分数、88.50%的总体准确率以及0.816的马修斯相关系数(MCC),证明了其在实时农业监测系统中的有效性和实际潜力。