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Improved change monitoring using an ensemble of time series algorithms

机译:使用时间序列算法的集合改进改变变化监控

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An ensemble of time series algorithms improves land change monitoring. The methodology combines the Continuous Change Detection and Classification (CCDC; Zhu & Woodcock, 2014) and Cumulative Sum of Residuals (CUSUM) algorithms for break detection and the Chow Test (Chow, 1960) for removing false positives (or breaks in time series not representing land change). The algorithms included are based on fundamentally different approaches to change detection and therefore offer unique advantages. The ensemble, or the combination of the three algorithms, was applied to 3 Landsat scenes in the United States and the results were assessed based on their ability to correctly discern structural breaks from stable time periods. The CUSUM test was shown to detect significant breaks 84.18% of the time and the Chow Test correctly removed breaks in 87.4% of the breaks analyzed. The ensemble produced results with lower frequency of errors of omission and commission (Type-I and Type-II errors) than a single algorithm approach. These results indicate that using a combination of break detection algorithms can be an improvement over typical approaches that utilize only one algorithm.
机译:时间序列算法的集合可提高土地变革监控。该方法结合了连续变化检测和分类(CCDC; Zhu&Woodcock,2014)和断裂检测的累积量(CUSUM)算法和用于消除误报(或在时间序列中断的CHOW,1960)代表土地变革)。包括的算法基于基本上不同的改变检测方法,因此提供了独特的优势。该集合或三种算法的组合应用于美国的3个Landsat场景,并根据其正确辨别稳定时间段的结构突破的能力来评估结果。显示肠测试检测84.18%的显着断裂,并在分析的87.4%的突破中正确地消除了次次的衰退。该集合产生的结果与省略遗漏和委托(I型和II型错误)的误差较低,而不是单一算法方法。这些结果表明,使用中断检测算法的组合可以是使用仅使用一种算法的典型方法的改进。

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