噪声时间序列的在线变化检测算法:在近实时烧伤面积映射中的应用

Xi C. Chen, Vipin Kumar, James H. Faghmous
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引用次数: 4

摘要

缺乏关于土地覆盖变化的全球知识限制了我们对地球系统的理解,阻碍了自然资源的管理,也加剧了风险。遥感数据提供了自动探测和监测土地覆盖变化的机会。虽然可以从遥感时间序列中观测到土地覆盖的变化,但由于遥感数据的噪声、缺失值和季节性等特性,大多数传统的变化点检测算法的性能并不好。我们提出了一种在线变化点检测方法来解决这些挑战。通过独立的验证集,我们发现该方法在具有生态多样性特征的两个测试区域都优于四种基线方法。
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Online Change Detection Algorithm for Noisy Time-Series: An Application Tonear-Real Time Burned Area Mapping
Lack of the global knowledge of land-cover changes limits our understanding of the earth system, hinders natural resource management and also compounds risks. Remote sensing data provides an opportunity to automatically detect and monitor land-cover changes. Although changes in land cover can be observed from remote sensing time series, most traditional change point detection algorithms do not perform well due to the unique properties of the remote sensing data, such as noise, missing values and seasonality. We propose an online change point detection method that addresses these challenges. Using an independent validation set, we show that the proposed method performs better than the four baseline methods in both of the two testing regions, which has ecologically diverse features.
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