Detection of Cotton Verticillium Wilt Disease Severity Based on Hyperspectrum and GWO-SVM

Remote. Sens. Pub Date : 2023-07-01 DOI:10.3390/rs15133373
Nannan Zhang, Xiao Zhang, Peng Shang, Ruirui Ma, Xin-Ya Yuan, Li Li, Tiecheng Bai
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引用次数: 2

Abstract

In order to address the challenge of early detection of cotton verticillium wilt disease, naturally infected cotton plants in the field, which were divided into five categories based on the degree of disease severity, have been investigated in this study. Canopies of infected cotton plants were analyzed with spectral data measured, and various preprocessing techniques, including multiplicative scatter correction (MSC) and MSC-continuous wavelet analysis algorithms, were used to predict the disease severity. With a combination of support vector machine (SVM) models with such optimization algorithms as genetic algorithm (GA), grid search (GS), particle swarm optimization (PSO), and grey wolf optimizer (GWO), a grading model of cotton verticillium wilt disease was established in this study. The study results show that the MSC-PSO-SVM model outperforms the other three models in terms of classification accuracy, and the accuracy, macro precision, macro recall, and macro F1-score of this model are 80%, 81.26%, 80%, and 79.57%, respectively. Among those eight models constructed on the basis of continuous wavelet analyses using mexh and db3, the MSC-db3(23)-PSO-SVM and MSC-db3(23)-GWO-SVM models perform best, with the latter having a shorter running time. An overall evaluation shows that the MSC-db3(23)-GWO-SVM model is an optimal model, with values of its accuracy, macro precision, macro recall, and macro F1-score indicators being 91.2%, 92.02%, 91.2%, and 91.16%, respectively. Moreover, under this model, the prediction accuracy on disease levels 1 and 5 has achieved the highest rate of 100%, with a prediction accuracy rate of 88% on disease level 2 and the lowest prediction accuracy rate of 84% on both disease levels 3 and 4. These results demonstrate that it is effective to use spectral technology in classifying the cotton verticillium wilt disease and satisfying the needs of field detection and grading. This study provides a new approach for the detection and grading of cotton verticillium wilt disease and offered a theoretical basis for early prevention, precise drug application, and instrument development for the disease.
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基于超光谱和GWO-SVM的棉花黄萎病严重程度检测
为了解决棉花黄萎病早期检测的难题,本研究对田间自然感染的棉花植株进行了调查,根据病害严重程度将其分为5类。利用实测光谱数据对棉株冠层进行分析,并采用乘法散射校正(MSC)和MSC-连续小波分析算法等预处理技术预测病害严重程度。本研究将支持向量机(SVM)模型与遗传算法(GA)、网格搜索(GS)、粒子群优化(PSO)、灰狼优化(GWO)等优化算法相结合,建立了棉花黄萎病分级模型。研究结果表明,MSC-PSO-SVM模型在分类准确率上优于其他三种模型,该模型的准确率为80%,宏观精密度为81.26%,宏观召回率为80%,宏观f1得分为79.57%。在基于mexh和db3的连续小波分析构建的8个模型中,MSC-db3(23)-PSO-SVM和MSC-db3(23)-GWO-SVM模型表现最好,后者运行时间更短。综合评价表明,MSC-db3(23)-GWO-SVM模型是最优模型,其正确率、宏观精密度、宏观召回率和宏观f1评分指标分别为91.2%、92.02%、91.2%和91.16%。在该模型下,疾病等级1和5的预测准确率最高,达到100%,疾病等级2的预测准确率为88%,疾病等级3和疾病等级4的预测准确率最低,均为84%。结果表明,利用光谱技术对棉花黄萎病进行分类是有效的,可以满足田间检测分级的需要。本研究为棉花黄萎病的检测和分级提供了新的途径,为该病的早期预防、精准用药和仪器研制提供了理论依据。
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