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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Continuous monitoring of land disturbance based on Landsat time series
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Continuous monitoring of land disturbance based on Landsat time series

机译:基于Landsat时间序列的土地障碍持续监测

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We developed a new algorithm for COntinuous monitoring of Land Disturbance (COLD) using Landsat time series. COLD can detect many kinds of land disturbance continuously as new images are collected and provide historical land disturbance maps retrospectively. To better detect land disturbance, we tested different kinds of input data and explored many time series analysis techniques. We have several major observations as follows. First, time series of surface reflectance provides much better detection results than time series of Top-Of-Atmosphere (TOA) reflectance, and with some adjustments to the temporal density, time series from Landsat Analysis Ready Data (ARD) is better than it is from the same Landsat scene. Second, the combined use of spectral bands is always better than using a single spectral band or index, and if all the essential spectral bands have been employed, the inclusion of other indices does not further improve the algorithm performance. Third, the remaining outliers in the time series can be removed based on their deviation from model predicted values based on probability-based thresholds derived from normal or chi-squared distributions. Fourth, model initialization is pivotal for monitoring land disturbance, and a good initialization stability test can influence algorithm performance substantially. Fifth, time series model estimation with eight coefficients model, updated for every single observation, based on all available clear observations achieves the best result. Sixth, a change probability of 0.99 (chi-squared distribution) with six consecutive anomaly observations and a mean included angle < 45 degrees to confirm a change provide the best results, and the combined use of temporally-adjusted Root Mean Square Error (RMSE) and minimum RMSE is recommended. Finally, spectral changes (or "breaks") contributed from vegetation regrowth should be excluded from land disturbance maps. The COLD algorithm was developed and calibrated based on all these lessons learned above. The accuracy assessment shows that COLD results were accurate for detecting land disturbance, with an omission error of 27% and a commission error of 28%.
机译:我们开发了一种新的算法,用于使用Landsat Time Series持续监测土地干扰(冷)。由于新的图像被收集并回顾性地提供历史土地扰动地图,因此冷却可以持续检测多种土地干扰。为了更好地检测土地扰动,我们测试了不同类型的输入数据,并探索了许多时间序列分析技术。我们有几个主要观察结果如下。首先,表面反射率的时间序列提供了比大气层(TOA)反射的时间序列更好的检测结果,并且对时间密度的一些调整,来自Landsat分析的时间序列就绪数据(ARD)优于它来自同一个兰德拉特的场景。其次,频谱频带的结合使用总是比使用单个光谱带或索引更好,并且如果已经采用了所有基本光谱频带,则包含其他索引不进一步提高算法性能。第三,可以基于基于从普通或CHI方向分布的基于概率的阈值,基于它们与模型预测值的偏差除去时间序列中的剩余异常值。第四,模型初始化是监测土地干扰的关键,并且良好的初始化稳定性测试可以大大影响算法性能。第五,使用八个系数模型的时间序列模型估计,根据所有可用的清除观察更新为每一个观察,实现最佳结果。第六,随着六个连续异常观测的0.99(Chi-Squared分布)的变化概率和平均值角度<45度以确认变化提供了最佳结果,并结合使用时间调整的根均线误差(RMSE)建议使用最低RMSE。最后,应排除从植被再生造成的源自植被再生映射的光谱变化(或“破裂”)。基于上述所有经验教训,开发和校准了冷算法。精度评估表明,冷却结果准确地检测土地干扰,遗漏误差为27%,佣金误差为28%。

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