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An Improved Method for Producing High Spatial-Resolution NDVI Time Series Datasets with Multi-Temporal MODIS NDVI Data and Landsat TM/ETM+ Images

机译:一种使用多时态MODIS NDVI数据和Landsat TM / ETM +图像生成高空间分辨率NDVI时间序列数据集的改进方法

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Due to technical limitations, it is impossible to have high resolution in both spatial and temporal dimensions for current NDVI datasets. Therefore, several methods are developed to produce high resolution (spatial and temporal) NDVI time-series datasets, which face some limitations including high computation loads and unreasonable assumptions. In this study, an unmixing-based method, NDVI Linear Mixing Growth Model (NDVI-LMGM), is proposed to achieve the goal of accurately and efficiently blending MODIS NDVI time-series data and multi-temporal Landsat TM/ETM+ images. This method firstly unmixes the NDVI temporal changes in MODIS time-series to different land cover types and then uses unmixed NDVI temporal changes to predict Landsat-like NDVI dataset. The test over a forest site shows high accuracy (average difference: −0.0070; average absolute difference: 0.0228; and average absolute relative difference: 4.02%) and computation efficiency of NDVI-LMGM (31 seconds using a personal computer). Experiments over more complex landscape and long-term time-series demonstrated that NDVI-LMGM performs well in each stage of vegetation growing season and is robust in regions with contrasting spatial and spatial variations. Comparisons between NDVI-LMGM and current methods (i.e., Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM), Enhanced STARFM (ESTARFM) and Weighted Linear Model (WLM)) show that NDVI-LMGM is more accurate and efficient than current methods. The proposed method will benefit land surface process research, which requires a dense NDVI time-series dataset with high spatial resolution.
机译:由于技术限制,对于当前的NDVI数据集,不可能在空间和时间维度上都具有高分辨率。因此,开发了几种方法来生成高分辨率(空间和时间)NDVI时间序列数据集,这些方法面临一些局限性,包括高计算量和不合理的假设。在这项研究中,提出了一种基于分解的方法NDVI线性混合增长模型(NDVI-LMGM),以实现准确,有效地融合MODIS NDVI时间序列数据和多时态Landsat TM / ETM +图像的目标。该方法首先将MODIS时间序列中的NDVI时间变化分解为不同的土地覆盖类型,然后使用未混合的NDVI时间变化来预测类似Landsat的NDVI数据集。在森林站点上进行的测试显示出NDVI-LMGM的准确性(平均差异:-0.0070;平均绝对差异:0.0228;平均绝对相对差异:4.02%)和计算效率(使用个人计算机31秒)。在更复杂的景观和长期时间序列上进行的实验表明,NDVI-LMGM在植被生长期的每个阶段均表现良好,并且在空间和空间变化明显的区域表现出色。 NDVI-LMGM与当前方法(即时空自适应反射融合模型(STARFM),增强型STARFM(ESTARFM)和加权线性模型(WLM))之间的比较表明,NDVI-LMGM比当前方法更准确,更高效。所提出的方法将有利于陆面过程研究,这需要密集的NDVI时间序列数据集并具有高空间分辨率。

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