红外与毫米波学报, 2015, 34 (4): 497, 网络出版: 2015-10-22  

基于线性光谱混合模型的地表温度像元分解方法

An effective method for LST decomposition based on the linear spectral mixing model
作者单位
1 南京大学 地理与海洋科学学院, 江苏 南京 210093
2 中国农业科学院农业资源与农业区划研究所, 北京 100081
摘要
以北京市Landsat TM为数据源, 提出了一种新的地表温度光谱分解模型(Temperature Unmixing with Spectral, TUS), 以期将地表温度的空间分辨率提高到30 m.首先, 基于线性光谱混合模型获得地表组分的丰度值.然后, 基于温度/植被指数选取典型端元的地表温度.最后, 综合地表组分的比辐射率数据实现地表温度的分解.结果表明, TUS模型能够有效地提高地表温度的空间分辨率, 反映不同地表组分地表温度的空间差异性, 平均绝对误差(MAE)和均方根误差(RMSE)分别为1.25 K和2.27 K, 非常适合于复杂地表覆盖地区的地表温度降尺度处理.
Abstract
This paper proposed a new pixel decomposition model of Temperature Unmixing with Spectral (TUS). Landsat TM data acquired in Beijing were used for the study. Firstly, land surface fraction was obtained based on the Linear Spectral Mixing Model.Secondly and LST of typical endmember was selected through Temperature Vegetation Index. Finally, pixel decomposition of LST can be achieved integrated emissivity with different surface components. Our results indicated that TUS can effectively improve the spatial resolution of land surface temperature, reflecting the spatial differences of surface components, with MAE and RMSE 1.25K and 2.27K respectively. Therefore we conclude that TUS model is applicable for decomposition of LST images for high spatial resolution in the complex surface coverage area.
参考文献

[1] Lu D, Weng Q. Spectral mixture analysis of ASTER images for examining the relationship between urban thermal features and biophysical descriptors in Indianapolis, Indiana, USA[J]. Remote Sensing of Environment, 2006, 104(2): 157-167.

[2] Li Z L, Tang B H. Wu H, et al. Satellite-derived land surface temperature:current stetus and perspective[J]. Remote Sensing of Environment,2013,131:14-37.

[3] SUN Ke, CHEN Sheng-Bo. Genetic algorithm based surface component temperatures retrieval by integrating MODIS TIR data from Terra and Aqua satellites [J]. J.Infrared Millim. Waves(孙珂, 陈圣波. 基于遗传算法综合 Terra/Aqua MODIS 热红外数据反演地表组分温度. 红外与毫米波学报), 2012, 31(5): 462-468.

[4] ZHOU Yi, QIN Zhi-Hao, BAO Gang. Progress in retrieving land surface temperature for the cloud-coverd pixels from thermal infrared remote sensing data[J]. Spectroscopy and Spectral Analysis(周义, 覃志豪, 包刚. 热红外遥感图像中云覆盖像元地表温度估算研究进展. 光谱学与光谱分析),2014,34(2):364-369.

[5] WANG Fei, QIN Zhi-Hao, WANG Qian-Qian. A method of TM6 band pixel decomposition based on the earth surface types[J]. Remote Sensing for Land & Resources(王斐, 覃志豪, 王倩倩. 基于地表类型的TM6波段像元分解方法. 国土资源遥感),2012,94(3):54-59.

[6] Friedl, M. Forward and inverse modeling of land surface energy balance using surface temperature measurements.Remote Sensing of Environment, 2002,79(2), 344-354.

[7] Kustas W P, Norman J M, Anderson M C, et al. Estimating subpixel surface temperatures and energy fluxes from the vegetation index-radiometric temperature relationship[J]. Remote Sensing of Environment. 2003, 85(4): 429-440.

[8] Weng Q, Rajasekar U, Hu X. Modeling urban heat islands and their relationship with impervious surface and vegetation abundance by using ASTER images. IEEE Transactions on Geoscience and Remote Sensing, 2011.49, 4080-4089.

[9] LI Hua, LIU Qin-Huo, ZOU Jie. Relationships of LST to NDBI and NDVI in Changsha-Zhuzhou-Xiangtan area based on MODIS data [J]. Scientia Geographica Sinica(历 华, 柳钦火, 邹 杰.基于MODIS数据的长株潭地区NDBI和NDVI与地表温度的关系研究. 地理科学), 2009, 29(2): 262-267.

[10] Deng C, Wu C. A spatially adaptive spectral mixture analysis for mapping subpixel urban impervious surface distribution[J]. Remote Sensing of Environment, 2013, 133: 62-70.

[11] Wu, C. Normalized spectral mixture analysis for monitoring urban composition using ETM+ imagery[J].Remote Sensing of Environment,2004, 93, 480-492.

[12] ZHOU Hao, WANG Bin, ZHANG Li-Ming. New scheme for decomposition of mixes pixels of remote sensing images [J]. J.Infrared Millim. Wave(周昊,王斌,张立明. 一种新的遥感图像混合像元分解方法.红外与毫米波学报),2005,24(6):463-466.

[13] Sandholt I. A simple interpretation of the surface temperature/vegetation index space for assessment of surface moisture status[J] . Remote Sensing of Environment,2002,79,213-224.

[14] Qin Z H, Karnieli A, Berliner P. A mono-window algorithm for retrieving land surface temperature from Landsat TM data and its application to the Israel-Egypt border region[J]. International Journal of Remote Sensing, 2001,22(18): 3719-3746.

[15] QIN Zhi-Hao, ZHANG Ming-Hua, ARNON Karnieli, et al. Mono-window algorithm for retriving landsurface temperature from Landsat TM 6 data[J]. Acta Geographica Sinica(覃志豪, ZHANG Ming-Hua, ARNON Karnieli, et al. 用陆地卫星 TM6 数据演算地表温度的单窗算法. 地理学报), 2001. 56(4): 456-466.

[16] QIN Zhi-Hao, LI Wen-Juan, ZHANG Ming-Hua, et al. Estimating of The Essential Atmospheric Parameters of Mono-window Algorithm for Land Surface Temperature Retrieval from Landsat TM6[J]. Remote Sensing for Land & Resources(覃志豪, LI Wen-Juan, ZHANG Ming-Hua, 等. 单窗算法的大气参数估计方法. 国土资源遥感), 2003,56(2): 37-43.

[17] QIN Zhi-Hao, LI Wen-Juan, XU Bin, et al. The estimation of land surface emissivity for landsat TM6[J]. Remote Sensing for Land & Resources(覃志豪,李文娟,徐斌,等. 陆地卫星TM6波段范围内地表比辐射率的估计.国土资源遥感), 2004, 3: 28-32.

[18] Norman J M, Becker F. Terminology in thermal infrared remote sensing of natural surface[J]. Agricultural and Forest Meteorology, 1995, 77(3): 153-166.

[19] Li Z L, Wu H, Wang N.et al. Land surface emissivity retrieval from satellite data[J]. International Journal of Remote Sensing, 2013,34(9-10):3084-3127.

宋彩英, 覃志豪, 王斐. 基于线性光谱混合模型的地表温度像元分解方法[J]. 红外与毫米波学报, 2015, 34(4): 497. SONG Cai-Ying, QIN Zhi-Hao, WANG Fei. An effective method for LST decomposition based on the linear spectral mixing model[J]. Journal of Infrared and Millimeter Waves, 2015, 34(4): 497.

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