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Early detection of bacterial wilt in peanut plants through leaf-level hyperspectral and unmanned aerial vehicle data

机译:通过叶级高光谱和无人空中车辆数据早期检测花生植物中的细菌枯萎病

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摘要

Bacterial wilt (BW) caused by Ralstonia solanacearum is the most serious peanut diseases in South China. Its timely and accurate detection is important to opportunely implement disease management practices. This study aimed to establish and select the most appropriate leaf-level reflectance-based vegetation indices for BW detection and to determine whether these new indices can be used in UAV multispectral imaging for peanut BW detection. ANOVA, multilayer perception, and the reduced sampling method were used to analyze the spectral data. The most effective detection wavelengths, 730 nm and 790 nm, were used for developing new peanut BW detection indices. The 15 hyperspectral indices with highest correlation coefficients (R 0.01, M 1.0), as they could distinguish between healthy and BW infected peanut plants, even if the plant presented minimal external symptoms. Our findings confirmed the potential of hyperspectral remote sensing including leaf-level and UAV images for peanut BW detection at early disease stages and discrimination of different BW severity levels based on vegetation indices derived from leaf-level reflectance. Timely BW severity determination based on our results could provide farmers with useful information to control peanut BW disease.
机译:罗尔斯顿菌菌菌引起的细菌枯萎病(BW)是华南地区最严重的花生疾病。其及时和准确的检测对于机会实施疾病管理实践非常重要。本研究旨在为BW检测建立和选择最合适的叶子级反射率植被指数,并确定这些新索引是否可用于UAV MultiSpectral成像,用于花生BW检测。 ANOVA,多层感知和减少的采样方法用于分析光谱数据。最有效的检测波长,730nm和790nm用于开发新的花生BW检测指标。具有最高相关系数的15个高光谱索引(R 0.01,M 1.0),因为它们可以区分健康和BW感染的花生植物,即使植物呈现最小的外部症状。我们的研究结果证实了高光谱遥感的潜力,包括在早期疾病阶段进行花生BW检测的叶子级和无人机图像,以及基于叶级反射率的​​植被指数对不同BW严重程度的鉴别。基于我们的结果,及时BW严重程度确定可以为农民提供有用的信息来控制花生BW疾病。

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