Zhang Guosheng, Xu Tongyu, Tian Youwen
Shenyang Agricultural University, Shenyang, China.
Plant Methods. 2022 Nov 19;18(1):123. doi: 10.1186/s13007-022-00955-2.
Rice blast, which is prevalent worldwide, represents a serious threat to harvested crop yield and quality. Hyperspectral imaging, an emerging technology used in plant disease research, is a stable, repeatable method for disease grading. Current methods for assessing disease severity have mostly focused on individual growth stages rather than multiple ones. In this study, the spectral reflectance ratio (SRR) of whole leaves were calculated, the sensitive wave bands were selected using the successive projections algorithm (SPA) and the support vector machine (SVM) models were constructed to assess rice leaf blast severity over multiple growth stages.
The average accuracy, micro F1 values, and macro F1 values of the full-spectrum-based SVM model were respectively 94.75%, 0.869, and 0.883 in 2019; 92.92%, 0.823, and 0.808 in 2021; and 88.09%, 0.702, and 0.757 under the 2019-2021 combined model. The SRR-SVM model could be used to evaluate rice leaf blast disease during multiple growth stages and had good generalizability.
The proposed SRR data analysis method is able to eliminate differences among individuals to some extent, thus allowing for its application to assess rice leaf blast severity over multiple growth stages. Our approach, which can supplement single-stage disease-degree classification, provides a possible direction for future research on the assessment of plant disease severity during multiple growth stages.
稻瘟病在全球范围内普遍存在,对收获的作物产量和质量构成严重威胁。高光谱成像作为植物病害研究中一种新兴技术,是一种用于病害分级的稳定、可重复的方法。目前评估病害严重程度的方法大多集中在单个生长阶段,而非多个生长阶段。在本研究中,计算了全叶的光谱反射率比(SRR),使用连续投影算法(SPA)选择敏感波段,并构建支持向量机(SVM)模型来评估多个生长阶段的水稻叶瘟严重程度。
基于全光谱的SVM模型在2019年的平均准确率、微观F1值和宏观F1值分别为94.75%、0.869和0.883;2021年分别为92.92%、0.823和0.808;在2019 - 2021年组合模型下分别为88.09%、0.702和0.757。SRR - SVM模型可用于评估多个生长阶段的水稻叶瘟病害,且具有良好的通用性。
所提出的SRR数据分析方法能够在一定程度上消除个体差异,从而可用于评估多个生长阶段的水稻叶瘟严重程度。我们的方法可以补充单阶段病害程度分类,为未来多生长阶段植物病害严重程度评估研究提供了一个可能的方向。