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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Error Sources in Deforestation Detection Using BFAST Monitor on Landsat Time Series Across Three Tropical Sites
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Error Sources in Deforestation Detection Using BFAST Monitor on Landsat Time Series Across Three Tropical Sites

机译:使用BFAST监测器在三个热带站点的Landsat时间序列上进行森林砍伐检测的错误源

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Accurate tropic deforestation monitoring using time series requires methods which can capture gradual to abrupt changes and can account for site-specific properties of the environment and the available data. The generic time series algorithm BFAST Monitor was tested using Landsat time series at three tropical sites. We evaluated the importance of how specific effects of site and radiometric correction affected the accuracy of deforestation monitoring when using BFAST Monitor. Twelve sets of time series of normalized difference vegetation index (NDVI) Landsat data (2000-2013) were analyzed. Time series properties varied according to site (Brazil, Ethiopia, and Vietnam) and which correction scheme was applied: Atmospheric Correction and Haze Reduction 2 and 3 (ATCOR 2 and 3), Landsat Ecosystem Disturbance Adaptive Processing System (LEDAPS), or Dark Object Subtraction (DOS). Mapping accuracy was compared using 1200 reference points per site and consistent designs for sampling, analysis (overall accuracy, user's accuracy, and producer's accuracy), and response (ground truth and very-high-resolution data). With the exception of DOS, mapping accuracies across correction methods were found to be similar but varied greatly with site. Mapping errors were modeled using a set of error parameters that yielded information on data and site-specific environmental properties. Important parameters for characterizing mapping errors were found to be variance of the NDVI and soil signal as well as availability of time series data, and forest edge effects. Based upon the results, local fine-tuning of the algorithm is essential for some areas but for others default settings create satisfactory accuracies.
机译:使用时间序列进行准确的热带森林砍伐监测,需要的方法应能捕获逐渐变化到突变的变化,并能说明特定于环境的环境特性和可用数据。使用Landsat时间序列在三个热带站点测试了通用时间序列算法BFAST Monitor。我们评估了使用BFAST Monitor时站点和辐射校正的特定效果如何影响毁林监测准确性的重要性。分析了十二组标准化差异植被指数(NDVI)Landsat数据的时间序列(2000-2013年)。时间序列的属性随地点(巴西,埃塞俄比亚和越南)的不同而有所不同,并且采用了以下校正方案:大气校正和减少雾霾2和3(ATCOR 2和3),Landsat生态系统扰动自适应处理系统(LEDAPS)或暗物体减法(DOS)。使用每个站点的1200个参考点和一致的设计进行采样,分析(总体准确性,用户的准确性和生产者的准确性)和响应(地面真实性和超高分辨率数据)的制图准确性进行了比较。除DOS之外,发现校正方法之间的映射精度相似,但随站点而变化很大。使用一组错误参数对制图错误进行建模,这些错误参数会产生有关数据和特定地点的环境属性的信息。发现表征制图误差的重要参数是NDVI和土壤信号的变化以及时间序列数据的可用性和森林边缘效应。根据结果​​,该算法的局部微调对于某些区域至关重要,而对于其他区域,默认设置可创建令人满意的精度。

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