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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Continental-scale land surface phenology from harmonized Landsat 8 and Sentinel-2 imagery
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Continental-scale land surface phenology from harmonized Landsat 8 and Sentinel-2 imagery

机译:来自统一兰德拉斯特8和Sentinel-2图像的大陆鳞片地表候选

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Dense time series of Landsat 8 and Sentinel-2 imagery are creating exciting new opportunities to monitor, map, and characterize temporal dynamics in land surface properties with unprecedented spatial detail and quality. By combining imagery from the Landsat 8 Operational Land Imager and the MultiSpectral Instrument on-board Sentinel-2A and -2B, the remote sensing community now has access to moderate (10-30 m) spatial resolution imagery with repeat periods of similar to 3 days in the mid-latitudes. At the same time, the large combined data volume from Landsat 8 and Sentinel-2 introduce substantial new challenges for users. Land surface phenology (LSP) algorithms, which estimate the timing of phenophase transitions and quantify the nature and magnitude of seasonality in remotely sensed land surface conditions, provide an intuitive way to reduce data volumes and redundancy, while also furnishing data sets that are useful for a wide range of applications including monitoring ecosystem response to climate variability and extreme events, ecosystem modelling, crop-type discrimination, and land cover, land use, and land cover change mapping, among others. To support the need for operational LSP data sets, here we describe a continental-scale land surface phenology algorithm and data product based on harmonized Landsat 8 and Sentinel-2 (HLS) imagery. The algorithm creates high quality times series of vegetation indices from HLS imagery, which are then used to estimate the timing of vegetation phenophase transitions at 30 m spatial resolution. We present results from assessment efforts evaluating LSP retrievals, and provide examples illustrating the character and quality of information related to land cover and terrestrial ecosystem properties provided by the continental LSP dataset that we have developed. The algorithm is highly successful in ecosystems with strong seasonal variation in leaf area (e.g., deciduous forests). Conversely, results in evergreen systems are less interpretable and conclusive.
机译:Landsat 8和Sentinel-2图像的密集时间序列正在创造令人兴奋的新机遇,以监视土地表面属性中的时间动态,具有前所未有的空间细节和质量。通过将图像与Landsat 8运营陆地成像器和多光谱仪器组合在一起,遥感社区现在可以访问中等(10-30米)的空间分辨率图像,重复时间与3天相似在中纬度。与此同时,Landsat 8和Sentinel-2的大型组合数据量为用户介绍了大量的新挑战。陆地表面酚类学(LSP)算法,其估计苯相的转变的时间和量化循环感测到的陆地表面条件中的季节性的性质和大小,提供了减少数据卷和冗余的直观方式,同时还提供了可用的数据集广泛的应用包括监测生态系统对气候变异性和极端事件,生态系统建模,作物型歧视以及陆地覆盖,土地利用以及陆地覆盖变更映射的影响。为了支持对操作LSP数据集的需求,在这里,我们描述了基于协调的Landsat 8和Sentinel-2(HLS)图像的大陆尺度陆地面表面候选算法和数据产品。该算法从HLS图像创造了高质量的植被指数,然后用于估计植被诸如空间分辨率的植被苯相转变的时序。我们提出评估努力评估LSP检索的结果,并提供了我们开发的大陆LSP数据集提供的与土地覆盖和地面生态系统特性有关的信息的特征和质量。该算法在具有强大季节变化的生态系统中非常成​​功(例如,落叶林)。相反,Evergreen系统的结果不太可观的可解释和确凿。

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