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Generating daily land surface temperature at Landsat resolution by fusing Landsat and MODIS data

机译:通过融合Landsat和MODIS数据以Landsat分辨率生成每日地表温度

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Land surface temperature (LST) is a crucial parameter in investigating environmental, ecological processes and climate change at various scales, and is also valuable in the studies of evapotranspiration, soil moisture conditions, surface energy balance, and urban heat islands. These studies require thermal infrared (TIR) images at both high temporal and spatial resolution to retrieve LST. However, currently, no single satellite sensors can deliver TIR data at both high temporal and spatial resolution. Thus, various algorithms/models have been developed to enhance the spatial or the temporal resolution of TIR data, but rare of those can enhance both spatial and temporal details. This paper presents a new data fusion algorithm for producing Landsat-like LST data by blending daily MODIS and periodic Landsat TM datasets. The original Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) was improved and modified for predicting thermal radiance and LST data by considering annual temperature cycle (ATC) and urban thermal landscape heterogeneity. The technique of linear spectral mixture analysis was employed to relate the Landsat radiance with the MODIS one, so that the temporal changes in radiance can be incorporated in the fusion model. This paper details the theoretical basis and the implementation procedures of the proposed data fusion algorithm, Spatio-temporal Adaptive Data Fusion Algorithm for Temperature mapping (SADFAT). A case study was conducted that predicted LSTs of five dates in 2005 from July to October in Los Angeles County, California. The results indicate that the prediction accuracy for the whole study area ranged from1.3 K to 2 K. Like existing spatio-temporal data fusion models, the SADFAT method has a limitation in predicting LST changes that were not recorded in theMODIS and/or Landsat pixels due to themodel assumption.
机译:地表温度(LST)是研究各种规模的环境,生态过程和气候变化的关键参数,在蒸散量,土壤湿度条件,表面能平衡和城市热岛的研究中也很有价值。这些研究需要高时间和空间分辨率的热红外(TIR)图像来检索LST。但是,目前,没有任何单个卫星传感器可以在高时间和空间分辨率下传送TIR数据。因此,已经开发了各种算法/模型来增强TIR数据的空间或时间分辨率,但是很少有可以同时增强空间和时间细节的算法/模型。本文提出了一种新的数据融合算法,通过将每日的MODIS和定期的Landsat TM数据集进行混合来生成类似Landsat的LST数据。最初的时空自适应反射融合模型(STARFM)进行了改进和修改,通过考虑年度温度周期(ATC)和城市热景观异质性来预测热辐射和LST数据。使用线性光谱混合分析技术将Landsat辐射与MODIS关联,以便可以将辐射的时间变化纳入融合模型。本文详细介绍了所提出的数据融合算法-时空自适应温度映射数据融合算法(SADFAT)的理论基础和实现过程。进行了一个案例研究,预测2005年7月至10月在加利福尼亚州洛杉矶县的五个日期的LST。结果表明,整个研究区域的预测准确度在1.3 K到2 K之间。与现有的时空数据融合模型一样,SADFAT方法在预测未在MODIS和/或Landsat中记录的LST变化方面也存在局限性像素由于模型假设而异。

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