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The benefit of synthetically generated RapidEye and Landsat 8 data fusion time series for riparian forest disturbance monitoring

机译:合成生成的RapidEye和Landsat 8数据融合时间序列对河岸森林干扰监测的好处

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摘要

Insect defoliation causes forest disturbances with complex spatial dynamics. In order to monitor affected areas, decision makers seek but often lack information with high spatial and temporal precision. Within the context of a riparian Tugai forest disturbed by the insect Apocheima cinerarius, this study examines whether the analysis of a RapidEye time series would benefit from the availability of synthetically generated images at the spatial resolution of RapidEye and the additional temporal resolution of Landsat 8. We applied the Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model (ESTARFM) to downscale Landsat 8 Normalized Difference Vegetation Index (NDVI) scenes to concurrent RapidEye NDVI scenes. We a) performed a pixel-based regression analyses in order to evaluate the quality of the synthetically created NDVI products and b) examined if forest disturbance maps produced with synthetic images improve the accuracy of disturbance detection. The results show that the ESTARFM predictions have a sufficiently good accuracy, with a correlation coefficient between 0.878 < r < 0.919 (p < 0.001) and an average root mean square error 0.015 < RMSE < 0.024. The overall accuracy of forest disturbance detection with added synthetic images increased from 42.8% to 61.1 & 65.7% compared to the original data set. Forest recovery detection accuracy improved from 59.5% to 80.9%. The main source of error in the disturbance analysis occurs during the temporal interweaving between foliation and defoliation in spring. (C) 2016 Elsevier Inc. All rights reserved.
机译:昆虫的脱叶导致森林干扰,其空间动态复杂。为了监视受影响的区域,决策者寻求但往往缺乏具有高时空精度的信息。在受到昆虫Apocheima cinerarius干扰的河岸图加伊森林的背景下,本研究检验了RapidEye时间序列的分析是否将受益于RapidEye的空间分辨率和Landsat 8的额外时间分辨率的合成图像的可用性。我们将增强的时空自适应反射融合模型(ESTARFM)应用于将Landsat 8归一化植被指数(NDVI)场景缩减为并发的RapidEye NDVI场景。我们(a)进行了基于像素的回归分析,以评估合成NDVI产品的质量,并且(b)检查了由合成图像生成的森林干扰图是否能提高干扰检测的准确性。结果表明,ESTARFM预测具有足够好的精度,相关系数在0.878

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