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Robust estimation of BRDF model parameters

机译:BRDF模型参数的鲁棒估计

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摘要

The effect of the Bidirectional Reflectance Distribution Function (BRDF) is one of the most important factors in correcting the reflectance obtained from remotely sensed data. Estimation of BRDF model parameters can be deteriorated by various factors; contamination of the observations by undetected subresolution clouds or snow patches, inconsistent atmospheric correction in multiangular time series due to uncertainties in the atmospheric parameters, slight variations of the surface condition during a period of observation, for example due to soil moisture changes, diurnal effects on vegetation structure, and geolocation errors [Lucht and Roujean, 2000]. In the present paper, parameter estimation robustness is examined using Bidirectional Reflectance Factor (BRF) data measured for paddy fields in Japan. We compare both the M-estimator and the least median of squares (LMedS) methods for robust parameter estimation to the ordinary least squares method (LSM). In experiments, simulated data that were produced by adding noises to the data measured on the ground surface were used. Experimental results demonstrate that if a robust estimation is sought, the LMedS method can be adopted for the robust estimation of a BRDF model parameter.
机译:双向反射分布函数(BRDF)的影响是校正从遥感数据获得的反射率的最重要因素之一。 BRDF模型参数的估计会因各种因素而恶化;观测结果受到未检测到的亚分辨率云层或积雪的污染,由于大气参数的不确定性而在多角度时间序列中进行的大气校正不一致,观测期间地表条件的细微变化(例如由于土壤湿度变化,植被结构和地理位置误差[Lucht and Roujean,2000]。在本文中,使用针对日本稻田测得的双向反射系数(BRF)数据检查了参数估计的鲁棒性。我们将M估计器和最小二乘平方中位数(LMedS)方法与健壮的最小二乘法(LSM)进行比较,以进行健壮的参数估计。在实验中,使用了通过将噪声添加到地面上测得的数据而生成的模拟数据。实验结果表明,如果寻求鲁棒估计,则可以采用LMedS方法对BRDF模型参数进行鲁棒估计。

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