利用机器学习对严重程度进行分类:大豆作物的高光谱响应与目标斑点(Corynespora cassiicola)的关系

José de Queiroz Otone, G. F. Theodoro, D. C. Santana, L. Teodoro, Job Teixeira de Oliveira, Izabela Cristina de Oliveira, C. A. da Silva Junior, P. Teodoro, F. Baio
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引用次数: 0

摘要

植物对生物和非生物压力的反应是改变其生物物理和生物化学方面,如减少生物量和出现萎黄病,这可以通过应用于 VIS/NIR/SWIR 光谱范围的遥感技术很容易地识别出来。在当前的农业形势下,生产效率对农民来说至关重要,但靶斑病等病害仍在危害大豆产量。遥感技术,尤其是高光谱传感技术,可以检测到这些病害,但也存在成本和复杂性等缺点,因此在这些活动中使用无人机更为经济实惠。本研究的目标是(i) 为机器学习模型中评估的指标确定最合适的输入变量(波段、植被指数和所有反射率范围);(ii) 验证在不同严重程度下,NDVI(归一化差异植被指数)、谷物重量和产量的响应是否存在统计差异;(iii) 确定光谱波段和植被指数与靶斑病严重程度、谷物重量和产量之间是否存在关系。田间试验在 2022/23 作季进行,涉及不同的杀菌剂处理,以获得不同的病害严重程度。使用光谱辐射计和无人机(UAV)图像收集叶片的光谱数据。使用不同的算法对数据进行机器学习分析。当使用光谱数据时,LR(逻辑回归)和 SVM(支持向量机)算法在对目标斑点严重程度进行分类时表现更好。多变量典型分析表明,健康叶片在特定波长下表现突出,而病叶则表现出不同的光谱模式。使用高光谱传感器进行病害检测能够获取详细信息。我们的研究结果表明,遥感技术,特别是使用高光谱传感器和机器学习技术,可以有效地对大豆作物中的靶斑病进行早期检测和监测,从而为控制和预防产量损失做出快速决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperspectral Response of the Soybean Crop as a Function of Target Spot (Corynespora cassiicola) Using Machine Learning to Classify Severity Levels
Plants respond to biotic and abiotic pressures by changing their biophysical and biochemical aspects, such as reducing their biomass and developing chlorosis, which can be readily identified using remote-sensing techniques applied to the VIS/NIR/SWIR spectrum range. In the current scenario of agriculture, production efficiency is fundamental for farmers, but diseases such as target spot continue to harm soybean yield. Remote sensing, especially hyperspectral sensing, can detect these diseases, but has disadvantages such as cost and complexity, thus favoring the use of UAVs in these activities, as they are more economical. The objectives of this study were: (i) to identify the most appropriate input variable (bands, vegetation indices and all reflectance ranges) for the metrics assessed in machine learning models; (ii) to verify whether there is a statistical difference in the response of NDVI (normalized difference vegetation index), grain weight and yield when subjected to different levels of severity; and (iii) to identify whether there is a relationship between the spectral bands and vegetation indices with the levels of target spot severity, grain weight and yield. The field experiment was carried out in the 2022/23 crop season and involved different fungicide treatments to obtain different levels of disease severity. A spectroradiometer and UAV (unmanned aerial vehicle) imagery were used to collect spectral data from the leaves. Data were subjected to machine learning analysis using different algorithms. LR (logistic regression) and SVM (support vector machine) algorithms performed better in classifying target spot severity levels when spectral data were used. Multivariate canonical analysis showed that healthy leaves stood out at specific wavelengths, while diseased leaves showed different spectral patterns. Disease detection using hyperspectral sensors enabled detailed information acquisition. Our findings reveal that remote sensing, especially using hyperspectral sensors and machine learning techniques, can be effective in the early detection and monitoring of target spot in the soybean crop, enabling fast decision-making for the control and prevention of yield losses.
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