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Fusion Methods for Land Surface Emissivity and Temperature Retrieval of the Landsat Data Continuity Mission Data

机译:Landsat数据连续性任务数据的地表发射率和温度反演的融合方法

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In this paper, a new approach based on two fusion schemes is proposed to overcome the uncertainties in land surface emissivity (LSE) estimation and, consequently, land surface temperature (LST) retrieval. The fusion schemes are called image-based weighted methods and knowledge-based weighted methods, in which each of them includes two LSE estimation methods. The effectiveness of the two proposed fusion schemes is empirically tested over two scenes of Landsat-8 (known as Landsat Data Continuity Mission) data sets, and the obtained LSEs by individual and proposed methods were compared to the LSE product of Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) by image-based and class-based cross-comparison. In both scenes, the adjusted normalized emissivity method (ANEM) and NDVI-based emissivity method (NBEM) provide appropriate results among five individual methods. In contrast, weighted to median (WMED) achieves superior results among the proposed fusion methods for both scenes. In addition, the root-mean-square error (rmse) values of LSE obtained by ANEM and WMED are 1.48% and 0.87%, which lead to 1.25 K and 0.73 K errors in the LST retrieval by the single-channel algorithm in the first scene, respectively. For the second scene, the error values of NBEM and WMED are 1.10% and 0.52%, which lead to 0.93 K and 0.44 K errors in the LST, respectively. Moreover, the error ranges and rmse of cross-comparison for the obtained LSE in the proposed methods were remarkably decreased. Also, in this research, for LST cross-comparison, an alternative scaling method based on LST products of the Moderate Resolution Imaging Spectroradiometer was proposed. The LST validation results demonstrated that the proposed methods provide better estimates in terms of three accuracy measures in both examined data sets.
机译:本文提出了一种基于两种融合方案的新方法,以克服地表发射率(LSE)估计以及地表温度(LST)检索中的不确定性。融合方案被称为基于图像的加权方法和基于知识的加权方法,其中每个融合方案包括两种LSE估计方法。在Landsat-8(称为Landsat数据连续性任务)数据集的两个场景中,对这两种拟议的融合方案的有效性进行了经验测试,并将通过单独方法和拟议方法获得的LSE与先进星载热发射LSE产品进行了比较。反射辐射计(ASTER)通过基于图像和基于类别的交叉比较。在这两个场景中,调整后的归一化发射率方法(ANEM)和基于NDVI的发射率方法(NBEM)在五个单独的方法中提供了适当的结果。相比之下,在两种场景的拟议融合方法中,加权中值(WMED)可获得更好的结果。此外,由ANEM和WMED获得的LSE的均方根误差(rmse)值分别为1.48%和0.87%,这在第一个通过单通道算法检索LST时会导致1.25 K和0.73 K误差。场景。对于第二个场景,NBEM和WMED的误差值为1.10%和0.52%,这分别导致LST中的0.93 K和0.44 K误差。此外,在所提出的方法中,获得的LSE的误差范围和交叉比较的rmse显着减小。此外,在这项研究中,为进行LST的交叉比较,提出了一种基于中等分辨率成像光谱仪的LST产品的替代缩放方法。 LST验证结果表明,在两个检验的数据集中,根据三种准确性度量,所提出的方法可以提供更好的估计。

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