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Improving the Consistency and Continuity of MODIS 8 Day Leaf Area Index Products

机译:提高MODIS 8天叶面积指数产品的一致性和连续性

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Time Series Analysis of Leaf Area Index (LAI) is vital to the understanding of global vegetation dynamics. The LAI time series derived from satellite observations are usually not complete and noisy due to cloud contamination and uncertainties in the retrieval techniques. In this paper, the continuity and consistency of the MODIS 8 day LAI products are improved using a method based on Caterpillar Singular Spectrum Analysis. The proposed method is compared with other standard methods: Savitzky-Golay filter, Empirical Mode Decomposition, Low Pass filtering and Asymmetric Gaussian fitting. The experiment demonstrates the smoothing and gap-filling ability of the developed method, which is more robust across the biomes both in terms of root mean square error metrics and bias metrics as compared to the standard methods.
机译:叶面积指数(LAI)的时间序列分析对于理解全球植被动态至关重要。由于云污染和检索技术的不确定性,从卫星观测获得的LAI时间序列通常不完整且嘈杂。本文使用基于Caterpillar奇异频谱分析的方法提高了MODIS 8天LAI产品的连续性和一致性。将该方法与其他标准方法进行了比较:Savitzky-Golay滤波器,经验模式分解,低通滤波和非对称高斯拟合。实验证明了所开发方法的平滑性和填补空白的能力,与标准方法相比,该方法在整个生物群落上均具有均方根误差度量和偏差度量。

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