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Spatial, spectral and temporal patterns of tropical forest cover change as observed with multiple scales of optical satellite data

机译:用多种尺度的光学卫星数据观测到的热带森林覆盖的空间,光谱和时间格局变化

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摘要

This article describes the development of a methodology for scaling observations of changes in tropical forest cover to large areas at high temporal frequency from coarse resolution satellite imagery. The approach for estimating proportional forest cover change as a continuous variable is based on a regression model that relates multispectral, multitemporal MODIS data, transformed to optimize the spectral detection of vegetation changes, to reference change data sets derived from a Landsat data record for a study site in Central America. A number of issues involved in model development are addressed here by exploring the spatial, spectral and temporal patterns of forest cover change as manifested in a time-series of multi-scale satellite imagery. The analyses highlighted the distinct spectral change patterns from year-to-year in response to the possible land cover trajectories of forest clearing, regeneration and changes in climatic and land cover conditions. Spectral response in the MODIS Calibrated Radiances Swath data set followed more closely with the expected patterns of forest cover change than did the spectral response in the Gridded Surface Reflectance product. With forest cover change patterns relatively invariant to the spatial grain size of the analysis, the model results indicate that the best spectral metrics for detecting tropical forest clearing and regeneration are those that incorporate shortwave infrared information from the MODIS calibrated radiances data set at 500-m resolution, with errors ranging from 7.4 to 10.9% across the time periods of analysis. (c) 2006 Elsevier Inc. All rights reserved.
机译:本文介绍了一种方法的发展,该方法可用于从粗分辨率卫星图像中以高时间频率将热带森林覆盖变化的观测扩展到大面积区域。将比例森林覆盖变化作为连续变量进行估算的方法基于回归模型,该回归模型将多光谱,多时间MODIS数据相关联,将其转换为优化植被变化的光谱检测,然后参考从Landsat数据记录中导出的变化数据集进行研究中美洲的网站。通过探索森林覆盖变化的空间,频谱和时间模式,可以解决模型开发中涉及的许多问题,这在多尺度卫星图像的时间序列中可以看出。分析强调了每年不同的光谱变化模式,以应对森林砍伐,更新和气候及土地覆盖条件变化的可能的土地覆盖轨迹。与“网格化表面反射率”产品中的光谱响应相比,“ MODIS校准辐射度扫描”数据集中的光谱响应与森林覆盖变化的预期模式更接近。由于森林覆盖变化模式相对于分析的空间粒度而言相对不变,模型结果表明,用于检测热带森林砍伐和更新的最佳光谱度量是那些结合了来自MODIS校准辐射强度数据集(500-m)的短波红外信息的度量。分辨率,分析期间的误差范围为7.4%至10.9%。 (c)2006 Elsevier Inc.保留所有权利。

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