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Errors in Time-Series Remote Sensing and an Open Access Application for Detecting and Visualizing Spatial Data Outliers Using Google Earth Engine

机译:时间序列遥感中的错误以及使用Google Earth Engine检测和可视化空间数据异常值的开放式访问应用程序

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摘要

Remotely sensed measures of productivity are frequently used to characterize global agriculture and vegetated ecosystems, and are often downscaled to describe local, remote areas where finer spatial and temporal resolution data are regularly unavailable. While data errors may propagate throughout any analytical procedure, those that are missed during delivery and preliminary data mining require more attention. Here, a collection of formerly and presently available global remote sensing products are compiled to demonstrate the temporal and geographic breadth of remote sensing uncertainty. Vegetation productivity measures are invaluable for monitoring global health, but erroneous estimates that go unrecognized may result in serious policy mistakes. It is eminently clear that generalizable and accessible a priori methods for anomaly detection are lacking and urgently needed so that data errors are recognized before public delivery and before widespread use. Simple yet effective statistics such as the modified Z-score, Tukey's outliers, and Geary's C are leveraged here to identify, locate, and visualize the types of outliers that remote sensing data users may elect to omit or correct. Contributing to the growing ensemble of Google Earth Engine methodologies, we propose this generalizable method of detecting spatial outliers for remote sensing error management by users across scientific domains.
机译:遥感生产率的测量通常用于表征全球农业和植被生态系统,并经常缩小尺度以描述经常无法获得更精细的时空分辨率数据的局部偏远地区。尽管数据错误可能会在任何分析过程中传播,但在交付和初步数据挖掘过程中遗漏的那些数据仍需要更多注意。在这里,汇集了一些以前和现在可用的全球遥感产品,以证明遥感不确定性的时间和地理范围。植被生产力措施对于监测全球健康状况非常宝贵,但未能得到认可的错误估计可能会导致严重的政策错误。显然,目前缺少并且迫切需要用于异常检测的可通用且可访问的先验方法,以便在公共交付之前和广泛使用之前识别出数据错误。简单而有效的统计数据(例如修改后的Z分数,Tukey的离群值和Geary的C)可在此处用于识别,定位和可视化遥感数据用户可能选择忽略或校正的离群值类型。随着Google Earth Engine方法论的不断发展,我们提出了这种可检测空间异常值的通用方法,用于跨科学领域的用户进行遥感错误管理。

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