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A semi-empirical approach for the estimation of land-surface emissivity from satellite data based on spectral index fusion using ensemble regression

机译:基于集合回归的光谱指数融合从卫星数据估算陆面发射率的半经验方法

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摘要

Land Surface Emissivity (LSE) is a key parameter in the thermal remote sensing, with several important applications, most notably in Land Surface Temperature (LST) estimation. This paper presents a semi-empirical method of LSE estimation from remote sensing data based on a fusion of spectral indices using the ensemble regression methods. The performance of the proposed method for Moderate Resolution Imaging Spectroradiometer (MODIS), Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), Operational Land Imager (OLI) and Thermal Infrared Sensor (TIRS) data was evaluated and compared with other semi-empirical methods developed for these sensors. The proposed method was designed in four stages. In the first stage, the reflectance of non-thermal bands and emissivity of thermal bands were simulated for different classes using the ASTER spectral library and the spectral response function of each sensor. In the second stage, the dataset to be used for the training of ensemble regression was arranged by calculating a number of spectral indices, which constitute the feature space along with non-thermal bands. In the third stage, the regression between emissivity of thermal bands of each sensor and the features extracted in the second stage was derived by the use of bagging, boosting and Random Forest (RF) regression methods. In the final stage Using Normalized Difference Vegetation Index (NDVI) values, the image was categorized into three classes including vegetation, non-vegetation and mixture areas using conditions NDVI 0.5, NDVI 0.2 and 0.2 NDVI 0.5, respectively. The non-vegetation class was then categorized to soil, rock, and man-made classes using land use map. The spectral indices of these classes were then calculated, and the corresponding model trained in the third stage was used to estimate the LSE for that band. The results of LSE estimations were compared with the standard product of each sensor. Due to the lack of standard product for Landsat-8, the ASTER product was used as a substitute. For better analysis, the proposed method was also evaluated with other semi-empirical methods developed for MODIS, ASTER and OLI/TIRS sensors. This evaluation showed that the lowest Root Mean Square Error (RMSE) values for OLI/TIRS bands 10 and 11 are 0.0070 and 0.0075 obtained, respectively, by bagging and RF regression methods. For ASTER bands 13 and 14, the lowest RMSE values of 0.0078 and 0.0077 are both obtained by RF regression. For MODIS bands 31 and 32, the lowest RMSE values are 0.0053 and 0.0049 and obtained by boosting method. A comparison between the proposed method and other semi-empirical methods provided for these sensors demonstrated the ability of the method to improve the RMSE by up to 0.5%. Regarding the higher accuracy and applicability of the proposed method, it can serve as an effective and efficient means of estimating LSE using remote sensing data.
机译:地表发射率(LSE)是热遥感中的关键参数,它具有许多重要的应用,尤其是在地表温度(LST)估计中。本文提出了一种基于半光谱的遥感影像LSE估计方法,该方法基于光谱指数的融合,采用了集成回归方法。对中分辨率成像光谱仪(MODIS),先进的星载热发射和反射辐射仪(ASTER),可操作地面成像仪(OLI)和热红外传感器(TIRS)数据的拟议方法的性能进行了评估,并与其他半经验方法进行了比较为这些传感器而开发。所提出的方法分四个阶段进行设计。在第一阶段,使用ASTER光谱库和每个传感器的光谱响应函数,针对不同类别模拟了非热能带的反射率和热能带的发射率。在第二阶段,通过计算许多光谱指数来安排用于训练整体回归的数据集,这些光谱指数与非热带一起构成了特征空间。在第三阶段,使用装袋,增强和随机森林(RF)回归方法得出每个传感器的热带发射率与第二阶段提取的特征之间的回归。在最后阶段,使用归一化植被指数(NDVI)值,分别使用条件NDVI> 0.5,NDVI <0.2和0.2 NDVI 0.5将图像分为三类,包括植被,非植被和混合区域。然后使用土地利用图将非植被类别分类为土壤,岩石和人造类别。然后计算这些类别的光谱指数,并使用在第三阶段训练的相应模型来估算该频段的LSE。将LSE估计的结果与每个传感器的标准产品进行比较。由于缺少Landsat-8的标准产品,因此将ASTER产品用作替代产品。为了进行更好的分析,还针对MODIS,ASTER和OLI / TIRS传感器开发的其他半经验方法对提出的方法进行了评估。该评估表明,通过装袋法和RF回归方法获得的OLI / TIRS频带10和11的最低均方根误差(RMSE)值分别为0.0070和0.0075。对于ASTER频段13和14,均通过RF回归获得最低的RMSE值0.0078和0.0077。对于MODIS频带31和32,最低RMSE值分别为0.0053和0.0049,并通过增强方法获得。所提出的方法与为这些传感器提供的其他半经验方法之间的比较表明,该方法能够将RMSE提高多达0.5%。关于所提出方法的更高的准确性和适用性,它可以用作使用遥感数据估计LSE的有效手段。

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