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Mapping Winter Wheat Planting Area and Monitoring Its Phenology Using Sentinel-1 Backscatter Time Series

机译:使用Sentinel-1反向散射时间序列绘制冬小麦种植面积图并监测其物候

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Crop planting area mapping and phenology monitoring are of great importance to analyzing the impacts of climate change on agricultural production. In this study, crop planting area and phenology were identified based on Sentinel-1 backscatter time series in the test region of the North China Plain, East Asia, which has a stable cropping pattern and similar phenological stages across the region. Ground phenological observations acquired from a typical agro-meteorological station were used as a priori knowledge. A parallelepiped classifier processed VH (vertical transmitting, horizontal receiving) and VV (vertical transmitting, vertical receiving) backscatter signals in order to map the winter wheat planting area. An accuracy assessment showed that the total classification accuracy reached 84% and the Kappa coefficient was 0.77. Both the difference ( σ d ) between VH and VV and its slope were obtained to contrast with a priori knowledge and then used to extract the phenological metrics. Our findings from the analysis of the time series showed that the seedling, tillering, overwintering, jointing, and heading of winter wheat may be closely related to σ d and its slope. Overall, this study presents a generalizable methodology for mapping the winter wheat planting area and monitoring phenology using Sentinel-1 backscatter time series, especially in areas lacking optical remote sensing data. Our results suggest that the main change in Sentinel-1 backscatter is dominated by the vegetation canopy structure, which is different from the established methods using optical remote sensing data, and it is available for phenological metrics extraction.
机译:作物种植面积测绘和物候监测对分析气候变化对农业生产的影响非常重要。在这项研究中,根据Sentinel-1反向散射时间序列在东亚华北平原测试区域确定了作物种植面积和物候,该区域具有稳定的种植模式和相似的物候阶段。从典型的农业气象站获得的地面物候观测资料被用作先验知识。平行六面体分类器处理了VH(垂直发射,水平接收)和VV(垂直发射,垂直接收)反向散射信号,以便绘制冬小麦播种面积。准确性评估表明,总分类准确性达到84%,卡伯系数为0.77。获取VH和VV之间的差异(σd)及其斜率与先验知识进行对比,然后用于提取物候指标。通过时间序列分析发现,冬小麦的幼苗,分till,越冬,拔节和抽穗可能与σd及其斜率密切相关。总体而言,这项研究提出了一种通用的方法,可用于绘制冬小麦播种面积并使用Sentinel-1反向散射时间序列监测物候,特别是在缺少光学遥感数据的地区。我们的结果表明,Sentinel-1反向散射的主要变化主要是植被冠层结构,这与使用光学遥感数据建立的方法不同,并且可用于物候指标提取。

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