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Assessing the accuracy of detected breaks in Landsat time series as predictors of small scale deforestation in tropical dry forests of Mexico and Costa Rica

机译:评估LANDSAT时间序列中检测到的准确性作为墨西哥热带干燥林中小规模砍伐森林的预测因子

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Tracking the occurrence of deforestation events is an essential task in tropical dry forest (TDF) conservation efforts. Ideally, deforestation monitoring systems would identify a TDF clearing with near real time precision and high spatial detail, and alert park managers and environmental practitioners of illegal forest clearings occurring anywhere in a region of interest. Over the past several years there have been significant advances in the design and application of continuous land cover change mapping algorithms with these capabilities, but no studies have implemented such methods over human dominated TDF environments where small scale deforestation ( 5 ha) is widespread and hard to detect with moderate resolution sensors. The general objective for this research was to evaluate the overall accuracy of the BFASTSpatial R Package for detecting and monitoring small-scale deforestation in four sites located in tropical dry forest landscapes of Mexico and Costa Rica using greenness and moisture spectral indices derived from Landsat time series. Results show a high degree of spatial agreement (90%-94%) between the distribution of TDF clearings occurred during the 2013-2016 period (as indicated by VHR imagery interpretation) and BFASTSpatial outputs. NDMI and NBR2 had the best performance than other indices and this is evidenced by the combined overall, user's and producer's accuracies. In particular, NBR2 were the most accurate predictor of deforestation with an overall accuracy of 94.5%. Our results also imply that monitoring sites at an annual basis is feasible using BFASTSpatial and LTS, but that lower confidence should be given to sub-annual products given significant systematic temporal differences between the BFASTSpatial monthly product and reference data. The possibility of including more clear observations at the spatial resolution of Landsat (30-m) or higher will greatly increase the spatial and temporal accuracies of the method. Given its performance, BF
机译:跟踪森林砍伐事件的发生是热带干燥森林(TDF)保护努力的重要任务。理想情况下,森林砍伐监测系统将识别与近实时精密和高空间细节的TDF清算,以及在感兴趣地区的任何地方发生的非法森林清除的警报公园经理和环境从业者。在过去的几年里,连续陆地覆盖改变映射算法的设计和应用具有重要进展,但没有研究在人类主导的TDF环境中实施了这种方法,其中小规模砍伐(& 5公顷)是普遍的并难以使用适度分辨率传感器检测。本研究的一般目标是评估BFUSTSPATIAL R包的整体准确性,用于检测和监测位于墨西哥热带干燥森林风景的四个地点的小型砍伐森林,使用来自Landsat Time Series的绿色和水分谱指标。 。结果在2013-2016期间发生了TDF清除的分布之间的高度空间协议(90%-94%)(如VHR Imagery解释所示)和BFUSTSPATIAL产出。 NDMI和NBR2具有比其他指数的最佳性能,这是通过整体,用户和生产者的准确性的组合来证明。特别是,NBR2是森林最精确的预测因子,整体准确性为94.5%。我们的结果也暗示,每年的监测网站是使用BFUSTSPATIAL和LTS的可行性,但是较低的信心应给予亚年年度产品,在BFUSTSPATIAL每月产品和参考数据之间获得显着的系统性时间差异。在Landsat(30-M)或更高的空间分辨率下包括更清晰的观察的可能性将大大提高该方法的空间和时间精度。鉴于其表现,BF

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