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New Spectral Index for Detecting Wheat Yellow Rust Using Sentinel-2 Multispectral Imagery

机译:利用Sentinel-2多光谱图像检测小麦黄锈的新光谱指数

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摘要

Yellow rust is one of the most destructive diseases for winter wheat and has led to a significant decrease in winter wheat quality and yield. Identifying and monitoring yellow rust is of great importance for guiding agricultural production over large areas. Compared with traditional crop disease discrimination methods, remote sensing technology has proven to be a useful tool for accomplishing such a task at large scale. This study explores the potential of the Sentinel-2 Multispectral Instrument (MSI), a newly launched satellite with refined spatial resolution and three red-edge bands, for discriminating between yellow rust infection severities (i.e., healthy, slight, and severe) in winter wheat. The corresponding simulative multispectral bands for the Sentinel-2 sensor were calculated by the sensor’s relative spectral response (RSR) function based on the in situ hyperspectral data acquired at the canopy level. Three Sentinel-2 spectral bands, including B4 (Red), B5 (Re1), and B7 (Re3), were found to be sensitive bands using the random forest (RF) method. A new multispectral index, the Red Edge Disease Stress Index (REDSI), which consists of these sensitive bands, was proposed to detect yellow rust infection at different severity levels. The overall identification accuracy for REDSI was 84.1% and the kappa coefficient was 0.76. Moreover, REDSI performed better than other commonly used disease spectral indexes for yellow rust discrimination at the canopy scale. The optimal threshold method was adopted for mapping yellow rust infection at regional scales based on realistic Sentinel-2 multispectral image data to further assess REDSI’s ability for yellow rust detection. The overall accuracy was 85.2% and kappa coefficient was 0.67, which was found through validation against a set of field survey data. This study suggests that the Sentinel-2 MSI has the potential for yellow rust discrimination, and the newly proposed REDSI has great robustness and generalized ability for yellow rust detection at canopy and regional scales. Furthermore, our results suggest that the above remote sensing technology can be used to provide scientific guidance for monitoring and precise management of crop diseases and pests.
机译:黄锈病是冬小麦最具破坏性的疾病之一,已导致冬小麦质量和单产显着下降。识别和监测黄锈病对于指导大面积农业生产非常重要。与传统的作物病害鉴别方法相比,遥感技术已被证明是大规模完成这一任务的有用工具。这项研究探索了Sentinel-2多光谱仪(MSI)的潜力,该卫星是一种具有精细空间分辨率和三个红边带的新发射卫星,可用于区分冬季的黄色铁锈感染严重程度(即健康,轻度和严重)小麦。 Sentinel-2传感器对应的模拟多光谱带是根据传感器的相对光谱响应(RSR)函数,基于在冠层获取的现场高光谱数据计算得出的。使用随机森林(RF)方法发现三个Sentinel-2光谱带为敏感带,其中包括B4(红色),B5(Re1)和B7(Re3)。提出了一个新的多光谱指数,即由这些敏感带组成的红边疾病压力指数(REDSI),以检测不同严重程度的黄锈病感染。 REDSI的总体识别准确度为84.1%,卡伯系数为0.76。此外,在冠层尺度上,REDSI的表现优于其他常用的疾病谱指数,可用于识别黄锈病。采用了最佳阈值方法,根据真实的Sentinel-2多光谱图像数据在区域范围内绘制黄锈病感染地图,以进一步评估REDSI的黄锈病检测能力。总体准确性为85.2%,卡帕系数为0.67,这是通过对一组现场调查数据进行验证而得出的。这项研究表明,Sentinel-2 MSI具有识别黄锈的潜力,而新提出的REDSI具有强大的鲁棒性和在冠层和区域尺度上检测黄锈的通用能力。此外,我们的结果表明上述遥感技术可用于为监测和精确管理农作物病虫害提供科学指导。

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