一种基于时空迭代估计的归一化植被指数时间序列重构新方法

Lili Xu, Baolin Li, Yecheng Yuan, Zhang Tao
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摘要

重建归一化植被指数(NDVI)时间序列数据是监测地表长期变化的必要条件。本文基于可靠的MODIS13Q1数据,提出了一种时空迭代(TSI)方法来估算污染MODIS13Q1像元的ndvi。首先通过时间序列中相邻高质量像元的线性插值计算污染像元的ndvi。然后,基于加权轨迹距离算法,利用同一生态区域内反映最相似土地覆盖的高质量像元的NDVI,导出污染像元的未确定NDVI;这两个步骤迭代重复,以估计的ndvi作为高质量的ndvi来估计其他未确定的污染像元的ndvi,直到估计出所有污染像元的ndvi。使用TSI估算ndvi的准确性明显高于非对称高斯、Savitzky-Golay和窗口回归方法;均方根误差和平均绝对百分比误差分别下降14.0 ~ 104.8%和19.4 ~ 47.3%。此外,TSI方法在各种环境条件下表现更好。比较方法的性能差异是TSI方法的8.8 ~ 17.0倍。当存在大量污染像素时,TSI方法最适用。
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A novel method to reconstruct normalized difference vegetation index time series based on temporal-spatial iteration estimation
Reconstructing normalized difference vegetation index (NDVI) time series datasets is essential for monitoring long-term changes of the terrestrial surface. Here, a temporal-spatial iteration (TSI) method was developed to estimate the NDVIs of contaminated MODIS13Q1 pixels based on reliable MODIS13Q1 data. NDVIs of contaminated pixels were firstly computed through linear interpolation of adjacent high-quality pixels in the temporal series. Then, undetermined NDVIs of contaminated pixels were derived using the NDVI of the high-quality pixel that reflected the most similar land cover within the same ecological region, based on the weighted trajectory distance algorithm. These two steps were repeated iteratively, taking the estimated NDVIs as high-quality NDVIs to estimate other undetermined NDVIs of contaminated pixels until all NDVIs of contaminated pixels were estimated. The accuracies of estimated NDVIs using TSI were clearly higher than the asymmetric Gaussian, Savitzky-Golay, and window-regression methods; root mean square error and mean absolute percent error decreased by 14.0-104.8% and 19.4-47.3%, respectively. Furthermore, the TSI method performed better over a variety of environmental conditions. Variation of performance by the compared methods was 8.8-17.0 times than that of the TSI method. The TSI method will be most applicable when large amount of contaminated pixels exist.
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