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Using RapidEye and MODIS Data Fusion to Monitor Vegetation Dynamics in Semi-Arid Rangelands in South Africa

机译:使用RapidEye和MODIS数据融合监测南非半干旱牧场的植被动态

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摘要

Image time series of high temporal and spatial resolution capture land surface dynamics of heterogeneous landscapes. We applied the ESTARFM (Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model) algorithm to multi-spectral images covering two semi-arid heterogeneous rangeland study sites located in South Africa. MODIS 250 m resolution and RapidEye 5 m resolution images were fused to produce synthetic RapidEye images, from June 2011 to July 2012. We evaluated the performance of the algorithm by comparing predicted surface reflectance values to real RapidEye images. Our results show that ESTARFM predictions are accurate, with a coefficient of determination for the red band 0.80 R2 0.92, and for the near-infrared band 0.83 R2 0.93, a mean relative bias between 6% and 12% for the red band and 4% to 9% in the near-infrared band. Heterogeneous vegetation at sub-MODIS resolution is captured adequately: A comparison of NDVI time series derived from RapidEye and ESTARFM data shows that the characteristic phenological dynamics of different vegetation types are reproduced well. We conclude that the ESTARFM algorithm allows us to produce synthetic remote sensing images at high spatial combined with high temporal resolution and so provides valuable information on vegetation dynamics in semi-arid, heterogeneous rangeland landscapes.
机译:高时空分辨率的图像时间序列可捕获异质景观的地表动态。我们将ESTARFM(增强的时空自适应反射融合模型)算法应用于覆盖位于南非的两个半干旱异质草地研究站点的多光谱图像。从2011年6月到2012年7月,将250 m分辨率的MODIS图像和5 m分辨率的RapidEye图像融合在一起,以生成合成的RapidEye图像。我们通过将预测的表面反射率值与真实的RapidEye图像进行比较,评估了算法的性能。我们的结果表明ESTARFM预测是准确的,红色波段0.80 <0.92,近红外波段0.83 的确定系数<0.93,红色波段的平均相对偏差在6%至12%之间,近红外波段的平均相对偏差在4%至9%之间。可以充分捕获亚MODIS分辨率下的非均质植被:比较来自RapidEye和ESTARFM数据的NDVI时间序列,可以很好地再现不同植被类型的特征物候动态。我们得出的结论是,ESTARFM算法使我​​们能够在高空间和高时间分辨率下生成合成的遥感图像,从而为半干旱,异质草地景观的植被动态提供有价值的信息。

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