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首页> 外文期刊>International journal of applied earth observation and geoinformation >Reconstructing land use history from Landsat time-series Case study of a swidden agriculture system in Brazil
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Reconstructing land use history from Landsat time-series Case study of a swidden agriculture system in Brazil

机译:从Landsat时间序列重建土地使用历史,以巴西一个耕种农业系统为例

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摘要

We developed a method to reconstruct land use history from Landsat images time-series. The method uses a breakpoint detection framework derived from the econometrics field and applicable to time-series regression models. The Breaks For Additive Season and Trend (BFAST) framework is used for defining the time-series regression models which may contain trend and phenology, hence appropriately modelling vegetation intra and inter-annual dynamics. All available Landsat data are used for a selected study area, and the time-series are partitioned into segments delimited by breakpoints. Segments can be associated to land use regimes, while the breakpoints then correspond to shifts in land use regimes. In order to further characterize these shifts, we classified the unlabelled breakpoints returned by the algorithm into their corresponding processes. We used a Random Forest classifier, trained from a set of visually interpreted time-series profiles to infer the processes and assign labels to the breakpoints. The whole approach was applied to quantifying the number of cultivation cycles in a swidden agriculture system in Brazil (state of Amazonas). Number and frequency of cultivation cycles is of particular ecological relevance in these systems since they largely affect the capacity of the forest to regenerate after land abandonment. We applied the method to a Landsat time-series of Normalized Difference Moisture Index (NDMI) spanning the 1984-2015 period and derived from it the number of cultivation cycles during that period at the individual field scale level. Agricultural fields boundaries used to apply the method were derived using a multi-temporal segmentation approach. We validated the number of cultivation cycles predicted by the method against in-situ information collected from farmers interviews, resulting in a Normalized Residual Mean Squared Error (NRMSE) of 0.25. Overall the method performed well, producing maps with coherent spatial patterns. We identified various sources of error in the approach, including low data availability in the 90s and sub-object mixture of land uses. We conclude that the method holds great promise for land use history mapping in the tropics and beyond. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们开发了一种从Landsat影像时间序列重建土地使用历史的方法。该方法使用从计量经济学领域派生的断点检测框架,适用于时间序列回归模型。 “相加季节和趋势中断”(BFAST)框架用于定义可能包含趋势和物候的时间序列回归模型,从而适当地模拟植被的年际和年际动态。所有可用的Landsat数据都用于选定的研究区域,并且时间序列划分为由断点界定的段。细分可以与土地使用制度相关联,而断点则对应于土地使用制度的变化。为了进一步表征这些变化,我们将算法返回的未标记断点归类为相应的过程。我们使用了随机森林分类器,该分类器从一组视觉解释的时间序列概要文件中进行训练,以推断过程并将标签分配给断点。整个方法用于量化巴西(亚马孙州)水耕农业系统中的耕种周期数。在这些系统中,栽培周期的数量和频率与生态特别相关,因为它们在很大程度上影响了土地弃置后森林的再生能力。我们将该方法应用于Landsat 1984-2015年期间的标准差水分指数(NDMI)时间序列,并从中得出该时期在各个田间规模水平上的耕种周期数。使用多时间分割方法得出了用于该方法的农田边界。我们根据从农民访谈中收集的现场信息验证了该方法预测的耕种周期数,从而得出0.25的标准化残差均方误差(NRMSE)。总体而言,该方法执行得很好,生成具有连贯空间模式的地图。我们确定了该方法中的各种错误源,包括90年代数据可用性低和土地利用的子对象混合。我们得出的结论是,该方法对热带地区及其他地区的土地利用历史图具有很大的希望。 (C)2015 Elsevier B.V.保留所有权利。

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