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Winter Wheat Growth Spatial Variation Monitoring Through Hyperspectral Remote Sensing Image

机译:冬小麦生长空间变异监测通过高光谱遥感图像

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This work aims at quantifying the winter wheat growth spatial heterogeneity captured by hyperspectral airborne images. The field experiment was conducted in 2001 and 2002 and airborne hyperspectral remote-sensing data was acquired at noon on 11 April 2001 using an operational modular imaging spectrometer (OMIS). Totally 12 winter fields which covered by both dense and sparse winter wheat canopies were selected to analysis the winter wheat growth heterogeneity. The experimental semi-variograms for bands covered from invisible to mid-infrared were computed for each field then the theoretical models were be fitted with least squares algorithm for spherical model, exponential model. The optimization model was selected after evaluated by R-square. Three key terms in each model, the sill, the range, and nugget variance were then calculated from the models. The study results show that the sill, range and nugget for same field wheat were varied with the wavelength from blue to mid infrared bands. Although wheat growth in different fields showed different spatial heterogeneity, they all showed an obvious sill pattern. The minimum of mean range value was 7.52 m for mid-infrared bands while the maximum value was 91.71 m for visible bands. The minimum of mean sill value ranged from 1.46 for visible bands to 39.76 for NIR bands, the minimum of mean nugget value ranged from 0.06 for visible bands to5.45 for mid-infrared bands. This study indicate that remote sensing image is important for crop growth spatial heterogeneity study. But it is necessary to explore the effect of different wavelength of image data on crop growth semi-variogram estimation and find out which band data could be used to estimate crop semi-variogram reliably.
机译:这项工作旨在量化高光谱空气传播图像捕获的冬小麦生长空间异质性。现场实验是在2001年和2002年4月11日2001年中午收购了Airbore高光谱遥感数据,使用操作模块化成像光谱仪(OMI)。选择了12个冬季围栏,由密集和稀疏的冬小麦檐篷进行选择,以分析冬小麦生长异质性。为每个字段计算从无形的中红外线覆盖的带的实验半变形仪,然后将理论模型配合有最小二乘算法,用于球面模型,指数模型。通过R-Square评估后选择优化模型。然后从模型计算每个模型中的三个关键术语,窗台,范围和核果方差。研究结果表明,与蓝色到中红外条带的波长,相同场小麦的窗台,范围和块状物变化。虽然不同领域的小麦生长显示出不同的空间异质性,但它们都显示出明显的窗台图案。用于中红外带的平均范围值的最小值为7.52米,而可见带的最大值为91.71米。对于NIR频带的可见频段为39.76的可见频带的最小值范围为1.46,对于中红外频段,可见带为5.45的平均块值的最小值为0.06。该研究表明,遥感图像对于作物生长空间异质性研究很重要。但是,有必要探索不同波长的图像数据对作物生长半变速仪估计的影响,并找出哪种频带数据可用于可靠地估计作物半变速仪。

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