首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Estimation of subpixel land surface temperature using an endmember index based technique: A case examination on ASTER and MODIS temperature products over a heterogeneous area
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Estimation of subpixel land surface temperature using an endmember index based technique: A case examination on ASTER and MODIS temperature products over a heterogeneous area

机译:使用基于端元指数的技术估算亚像素陆地表面温度:异质区域上ASTER和MODIS温度乘积的案例研究

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摘要

Land surface temperature (LST) is a key parameter in numerous environmental studies. Surface heterogeneity induces uncertainty in estimating subpixel temperature. To take an advantage of simultaneous, multi-resolution observations at coincident nadirs by the Advanced Spaceborne Thermal Emission Reflection Radiometer (ASTER) and the MODerate-resolution Imaging Spectroradiometer (MODIS), LST products from the two sensors were examined for a portion of suburb area in Beijing, China. We selected Soil-Adjusted Vegetation Index (SAVI), Normalized Multi-band Drought Index (NMDI), Normalized Difference Built-up Index (NDBI) and Normalized Difference Water Index (NDWI) as representative remote sensing indices for four land cover types (vegetation, bare soil, impervious and water area), respectively. By using support vector machines, the overall classification accuracy of the four land cover types with inputs of the four remote sensing indices, extracted from ASTER visible near infrared (VNIR) bands and shortwave infrared (SWIR) bands, reached 97.66%, and Kappa coefficient was 0.9632. In order to lower the subpixel temperature estimation error caused by re-sampling of remote sensing data, a disaggregation method for subpixel temperature using the remote sensing endmember index based technique (DisEMI) was established in this study. Firstly, the area ratios and statistical information of endmember remote sensing indices were calculated from ASTER VNIR/SWIR data at 990m and 90m resolutions, respectively. Secondly, the relationship between the 990m resolution MODIS LST and the corresponding input parameters (area ratios and endmember indices at the 990m resolution) was trained by a genetic algorithm and self-organizing feature map artificial neural network (GA-SOFM-ANN). Finally, the trained models were employed to estimate the 90m resolution subpixel temperature with inputs of area ratios and endmember indices at the 90m resolution. ASTER LST product was used for verifying the estimated subpixel temperature, and the verified results indicate that the estimated temperature distribution was basically consistent with that of ASTER LST product. A better agreement was found between temperatures derived by our proposed method (DisEMI) and the ASTER 90m data (R2=0.709 and RMSE=2.702K).
机译:在许多环境研究中,地表温度(LST)是关键参数。表面异质性在估计子像素温度时引起不确定性。为了利用先进的星载热发射反射辐射计(ASTER)和现代分辨率成像光谱仪(MODIS)在同时最低点同时进行多分辨率观测的优势,对一部分郊区的两个传感器的LST产品进行了检查。在中国北京我们选择了土壤调整植被指数(SAVI),归一化多带干旱指数(NMDI),归一化差异累积指数(NDBI)和归一化差异水指数(NDWI)作为四种土地覆盖类型(植被)的代表性遥感指数。 ,裸露的土壤,不透水的区域和水域)。通过使用支持向量机,从ASTER可见光近红外(VNIR)波段和短波红外(SWIR)波段中提取的四种遥感指数输入的四种土地覆盖类型的总体分类精度达到97.66%,并且Kappa系数为0.9632。为了降低由遥感数据的重新采样引起的子像素温度估计误差,本研究建立了一种基于遥感端元指标的技术(DisEMI),用于子像素温度的分解方法。首先,根据ASTER VNIR / SWIR数据分别以990m和90m的分辨率计算出末端成员遥感指数的面积比和统计信息。其次,通过遗传算法和自组织特征图人工神经网络(GA-SOFM-ANN)训练了990m分辨率的MODIS LST与相应输入参数(在990m分辨率下的面积比和末端成员指数)之间的关系。最后,使用训练有素的模型来估算90m分辨率的子像素温度,并以90m分辨率输入面积比和端部成员指数。 ASTER LST产品用于验证估计的子像素温度,验证结果表明估计的温度分布与ASTER LST产品基本一致。在我们提出的方法(DisEMI)得出的温度与ASTER 90m数据(R2 = 0.709和RMSE = 2.702K)之间找到了更好的一致性。

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