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Tracking disturbance-regrowth dynamics in tropical forests using structural change detection and Landsat time series

机译:利用结构变化检测和Landsat时间序列跟踪热带森林的干扰-再生动态

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Increasing attention on tropical deforestation and forest degradation has necessitated more detailed knowledge of forest change dynamics in the tropics. With an increasing amount of satellite data being released to the public free of charge, understanding forest change dynamics in the tropics is gradually becoming a reality. Methods to track forest changes using dense satellite time series allow for description of forest changes at unprecedented spatial, temporal and thematic resolution. We developed a data-driven approach based on structural change monitoring methods to track disturbance-regrowth dynamics using dense Landsat Time Series (LTS) in a tropical forest landscape in Madre de Dios, southern Peru. Whereas most existing post-disturbance regrowth monitoring methods rely on annual or near-annual time series, our method uses all available Landsat data. Using our disturbance-regrowth method, we detected annual disturbance from 1999 to 2013 with a total area-weighted accuracy of 91 +/- 2.3%. Accuracies of the regrowth results were strongly dependent on the timing of the original disturbance. We estimated a total area-weighted regrowth accuracy of 61 +/- 3.9% for pixels where original disturbances were predicted earlier than 2006. While the user's accuracy of the regrowth class for these pixels was high (84 +/- 8.1%), the producer's accuracy was low (56 +/- 9.4%), with markedly lower producer's accuracies when later disturbances were also included. These accuracies indicate that a significant amount of regrowth identified in the reference data was not captured with our method. Most of these omission errors arose from disturbances late in the time series or a lack of sensitivity to long-term regrowth due to lower data densities near the end of the time series. Omission errors notwithstanding, our study represents the first demonstration of a purely data-driven algorithm designed to detect disturbances and post-disturbance regrowth together using all available LTS data. With this method, we propose a continuous disturbance-regrowth monitoring framework, where LTS data are continually monitored for disturbances, post-disturbance regrowth, repeat disturbances, and so on. (C) 2015 Elsevier Inc. All rights reserved.
机译:对热带森林砍伐和森林退化的关注日益增加,因此需要对热带地区的森林变化动态有更详细的了解。随着越来越多的免费向公众发布卫星数据,逐渐了解热带地区的森林变化动态成为现实。使用密集的卫星时间序列跟踪森林变化的方法可以以前所未有的空间,时间和主题分辨率描述森林变化。我们开发了一种基于结构变化监测方法的数据驱动方法,以利用秘鲁南部Madre de Dios的热带森林景观中的致密Landsat时间序列(LTS)跟踪扰动再生动态。尽管大多数现有的扰动后再生长监测方法都依赖于年度或接近每年的时间序列,但我们的方法使用了所有可用的Landsat数据。使用扰动再生方法,我们检测到了1999年至2013年的年度扰动,总面积加权精度为91 +/- 2.3%。再生结果的准确性很大程度上取决于原始干扰的时间。对于原始干扰早于2006年预测的像素,我们估计总面积加权的重生精度为61 +/- 3.9%。尽管用户对这些像素的重生类别的精度很高(84 +/- 8.1%),但是生产者的准确性很低(56 +/- 9.4%),当还包括以后的干扰时,生产者的准确性会明显降低。这些准确性表明,我们的方法未捕获参考数据中确定的大量再生长。这些遗漏错误中的大多数是由于时间序列末尾的干扰或由于时间序列末尾较低的数据密度而对长期再生长缺乏敏感性引起的。尽管存在遗漏错误,但我们的研究还是首次展示了纯数据驱动算法,该算法旨在使用所有可用的LTS数据一起检测干扰和扰动后的再生长。使用这种方法,我们提出了一个连续的扰动-再生监测框架,在该框架中连续监视LTS数据的扰动,扰动后再生,重复扰动等。 (C)2015 Elsevier Inc.保留所有权利。

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