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A Method for Surface Roughness Parameter Estimation in Passive Microwave Remote Sensing 被引量:4

A Method for Surface Roughness Parameter Estimation in Passive Microwave Remote Sensing
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摘要 Surface roughness parameter is an important factor and obstacle for retrieving soil moisture in passive microwave remote sensing.Two statistical parameters,root mean square (RMS) height (s) and correlation length (l),are designed for describing the roughness of a randomly rough surface.The roughness parameter measured by traditional way is independence of frequency,soil moisture and soil heterogeneity and just the ″geometric″ roughness of random surface.This ″geometric″ roughness can not fully explain the scattered thermal radiation by the earth's surface.The relationship between ″geometric″ roughness and integrated roughness (contain both ″geometric″ roughness and ″dielectric″ roughness) is linked by empirical coefficient.In view of this problem,this paper presents a method for estimating integrated surface roughness from radiometer sampling data at different frequencies,which mainly based on the flourier relationship between power spectral density distribution and spatial autocorrelation function.We can obtain integrated surface roughness at different frequencies by this method.Besides "geometric" roughness,this integrated surface roughness not only contains "dielectric" roughness but also includes frequency dependence.Combined with Q/H model the polarization coupling coefficient can also be obtained for both H and V polarization.Meanwhile,the simulated numerical results show that radiometer with a sensitivity of 0.1 K can distinguish the different surface roughness and the change of roughness with frequency for the same rough surface.This confirms the feasibility of radiometer sampling method for estimating the surface roughness theoretically.This method overcomes the problem of ″dielectric″ roughness measurement to some extent and can achieve the integrated surface roughness within a microwave pixel which can serve soil moisture inversion better than the ″geometric″ roughness. Surface roughness parameter is an important factor and obstacle for retrieving soil moisture in passive microwave remote sensing. Two statistical parameters, root mean square (RMS) height (s) and correlation length (l), are designed for describing the roughness of a randomly rough surface. The roughness parameter measured by traditional way is independence of frequency, soil moisture and soil heterogeneity and just the "geometric" roughness of random surface. This "geometric" roughness can not fully explain the scattered thermal radiation by the earth's surface. The relationship between "geometric" roughness and integrated roughness (contain both "geometric" roughness and "dielectric" roughness) is linked by empirical coefficient. In view of this problem, this paper presents a method for estimating integrated surface roughness from radiometer sampling data at different frequencies, which mainly based on the flourier relationship between power spectral density distribution and spatial autocorrelation function. We can obtain integrated surface roughness at different frequencies by this method. Besides "geometric" roughness, this integrated surface roughness not only contains "dielectric" roughness but also includes frequency dependence. Combined with Q/H model the polarization coupling coefficient can also be obtained for both H and V polarization. Meanwhile, the simulated numerical results show that radiometer with a sensitivity of 0.1 K can distinguish the different surface roughness and the change of roughness with frequency for the same rough surface. This confirms the feasibility of radiometer sampling method for estimating the surface roughness theoretically. This method overcomes the problem of "dielectric" roughness measurement to some extent and can achieve the integrated surface roughness within a microwave pixel which can serve soil moisture inversion better than the "geometric" roughness.
出处 《Chinese Geographical Science》 SCIE CSCD 2010年第4期345-352,共8页 中国地理科学(英文版)
基金 Under the auspices of the Key Direction in Knowledge Innovation Programs of Chinese Academy of Sciences (No. KZCX2-YW-340)
关键词 surface roughness passive microwave remote sensing statistical parameter estimation soil moisture RADIOMETER 表面粗糙度 遥感方法 被动微波 参数估计
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