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Using spatial context to improve early detection of deforestation from Landsat time series

机译:利用空间环境改善Landsat时间序列对森林砍伐的早期检测

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Mapping deforestation using medium spatial resolution satellite data (e.g. Landsat) is increasingly shifting from decadal and annual scales to sub-annual scales in recent years, but this shift has brought new challenges on how to account for seasonality in the satellite data when detecting deforestation. A seasonal model is typically used to account for seasonality, but fitting a seasonal model is difficult when there are not enough data in the time series. Here, we propose a new approach that reduces seasonality in satellite image time series using spatial context. With this spatial context approach, each pixel value in the image is spatially normalised using the median value calculated from neighbouring pixels whose pixel values are above the 90th percentile. Using Landsat data, we compared our spatial context approach to a seasonal model approach at a humid tropical forest in Brazil and a thy tropical forest with strong seasonality in Bolivia. After reducing seasonal variations in Landsat data, we detected deforestation from the same data using the Breaks For Additive Season and Trend (BFAST) method. We show that, in dry tropical forest, deforestation events are detected much earlier when the spatial context approach is used to reduce seasonal variations in Landsat data than when a seasonal model is used. In the dry tropical forest, the median temporal detection delay for deforestation from the spatial context approach was two observations, seven times shorter than the median temporal detection delay from the seasonal model approach (15 observations). In the humid tropical forest, the difference in the temporal detection delay between the spatial context and seasonal model approach was not significant. The differences in overall spatial accuracy between the spatial context and seasonal model were also not significant in both dry and humid tropical forests. The main benefit for using spatial context is early detection of deforestation events in forests with strong seasonality. Therefore, the spatial context approach we propose here provides opportunity to monitor deforestation events in dry tropical forests at sub-annual scales using Landsat data. (C) 2015 Elsevier Inc. All rights reserved.
机译:近年来,使用中等空间分辨率的卫星数据(例如Landsat)绘制森林砍伐图正从十年尺度和年度尺度向次年尺度转变,但是这种转变给如何在检测森林砍伐时考虑卫星数据的季节性带来了新挑战。通常使用季节性模型来说明季节性,但是当时间序列中的数据不足时,很难拟合季节性模型。在这里,我们提出了一种新的方法,可以使用空间上下文来减少卫星图像时间序列中的季节性。使用这种空间上下文方法,图像中的每个像素值都使用从像素值高于第90个百分位数的相邻像素计算出的中值进行空间归一化。利用Landsat数据,我们比较了巴西湿润的热带森林和玻利维亚季节性强的热带森林的空间背景方法和季节性模型方法。在减少Landsat数据的季节性变化之后,我们使用“相加季节和趋势的中断”(BFAST)方法从同一数据中检测到森林砍伐。我们表明,在干旱的热带森林中,使用空间上下文方法减少Landsat数据的季节性变化比使用季节性模型时,可以更早地检测到森林砍伐事件。在干燥的热带森林中,采用空间上下文方法进行森林砍伐的中位时间检测延迟为两个观测值,比使用季节性模型方法(15个观测结果)的中值时间检测延迟短七倍。在潮湿的热带森林中,空间背景和季节模型方法之间的时间检测延迟差异不明显。在干燥和潮湿的热带森林中,空间背景和季节模型之间总体空间精度的差异也不显着。使用空间环境的主要好处是可以在季节性强烈的森林中及早发现毁林事件。因此,我们在此提出的空间背景方法提供了使用Landsat数据监测亚热带尺度下干燥热带森林中森林砍伐事件的机会。 (C)2015 Elsevier Inc.保留所有权利。

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