Subbarayudu Chatla, Kubendiran Mohan
School of Computer Science and Engineering, Vellore Institute of Technology, Vellore, India.
PLoS One. 2025 May 14;20(5):e0322705. doi: 10.1371/journal.pone.0322705. eCollection 2025.
Leaf diseases in Zea mays crops have a significant impact on both the calibre and volume of maize yield, eventually impacting the market. Prior detection of the intensity of an infection would enable the efficient allocation of treatment resources and prevent the infection from spreading across the entire area. In this study, deep saliency map segmentation-based CNN is utilized for the detection, multi-class classification, and severity assessment of maize crop leaf diseases has been proposed. The proposed model involves seven different maize crop diseases such as Northern Leaf Blight Exserohilum turcicum, Eye Spot Oculimacula yallundae, Common Rust Puccinia sorghi, Goss's Bacterial Wilt Clavibacter michiganensis subsp. nebraskensis, Downy Mildew Pseudoperonospora, Phaeosphaeria leaf spot Phaeosphaeria maydis, Gray Leaf Spot Cercospora zeae-maydis, and Healthy are selected from publicly available datasets obtained from PlantVillage. After the disease-affected regions are identified, the features are extracted by using the EffiecientNet-B7. To classify the maize infection, a hybrid harris hawks' optimization (HHHO) is utilized for feature selection. Finally, from the optimized features obtained, classification and severity assessment are carried out with the help of Fuzzy SVM. Experimental analysis has been carried out to demonstrate the effectiveness of the proposed approach in detecting maize crop leaf diseases and assessing their severity. The proposed strategy was able to obtain an accuracy rate of around 99.47% on average. The work contributes to advancing automated disease diagnosis in agriculture, thereby supporting efforts for sustainable crop yield improvement and food security.
玉米作物的叶部病害对玉米产量的规模和数量都有重大影响,最终影响市场。提前检测感染强度将有助于有效分配治疗资源,并防止感染在整个区域扩散。在本研究中,利用基于深度显著性图分割的卷积神经网络(CNN)对玉米作物叶部病害进行检测、多类分类和严重程度评估。所提出的模型涉及七种不同的玉米作物病害,如大斑病凸脐蠕孢菌、眼斑病燕麦核腔菌、普通锈病高粱柄锈菌、戈斯细菌性枯萎病密执安棒形杆菌内布拉斯加亚种、霜霉病假霜霉属、球腔菌叶斑病玉米球腔菌、灰斑病玉米尾孢菌,以及健康状态,这些是从植物村获得的公开可用数据集中选取的。在识别出病害感染区域后,使用高效网络B7提取特征。为了对玉米感染进行分类,采用混合哈里斯鹰优化算法(HHHO)进行特征选择。最后,根据获得的优化特征,借助模糊支持向量机进行分类和严重程度评估。进行了实验分析,以证明所提出的方法在检测玉米作物叶部病害及其严重程度评估方面的有效性。所提出的策略平均能够获得约99.47%的准确率。这项工作有助于推动农业中的自动化疾病诊断,从而支持可持续作物产量提高和粮食安全的努力。