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Advancing of land surface temperature retrieval using extreme learning machine and spatio-temporal adaptive data fusion algorithm

机译:基于极限学习机和时空自适应数据融合算法的地表温度反演

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摘要

As a critical variable to characterize the biophysical processes in ecological environment, and as a key indicator in the surface energy balance, evapotranspiration and urban heat islands, Land Surface Temperature (LST) retrieved from Thermal Infra-Red (TIR) images at both high temporal and spatial resolution is in urgent need. However, due to the limitations of the existing satellite sensors, there is no earth observation which can obtain TIR at detailed spatial- and temporal-resolution simultaneously. Thus, several attempts of image fusion by blending the TIR data from high temporal resolution sensor with data from high spatial resolution sensor have been studied. This paper presents a novel data fusion method by integrating image fusion and spatio-temporal fusion techniques, for deriving LST datasets at 30 m spatial resolution from daily MODIS image and Landsat ETM+ images. The Landsat ETM+ TIR data were firstly enhanced based on extreme learning machine (ELM) algorithm using neural network regression model, from 60 m to 30 m resolution. Then, the MODIS LST and enhanced Landsat ETM+ TIR data were fused by Spatio-temporal Adaptive Data Fusion Algorithm for Temperature mapping (SADFAT) in order to derive high resolution synthetic data. The synthetic images were evaluated for both testing and simulated satellite images. The average difference (AD) and absolute average difference (AAD) are smaller than 1.7 K, where the correlation coefficient (CC) and root-mean-square error (RMSE) are 0.755 and 1.824, respectively, showing that the proposed method enhances the spatial resolution of the predicted LST images and preserves the spectral information at the same time.
机译:作为表征生态环境中生物物理过程的关键变量,以及作为地表能量平衡,蒸散和城市热岛的关键指标,从高红外热成像(TIR)图像中检索到的陆地表面温度(LST)迫切需要空间分辨率。但是,由于现有卫星传感器的局限性,没有地球观测能够同时获得详细的时空分辨率的TIR。因此,已经研究了通过将来自高时间分辨率传感器的TIR数据与来自高空间分辨率传感器的数据混合的图像融合的几种尝试。本文提出了一种融合图像融合和时空融合技术的新型数据融合方法,用于从每日MODIS图像和Landsat ETM +图像中提取30 m空间分辨率的LST数据集。首先使用神经网络回归模型基于极限学习机(ELM)算法增强了Landsat ETM + TIR数据,分辨率从60 m到30 m。然后,将MODIS LST和增强的Landsat ETM + TIR数据通过时空自适应温度映射数据融合算法(SADFAT)进行融合,以获取高分辨率的合成数据。对合成图像进行了测试和模拟卫星图像评估。平均差(AD)和绝对平均差(AAD)小于1.7 K,其中相关系数(CC)和均方根误差(RMSE)分别为0.755和1.824,表明该方法增强了预测的LST图像的空间分辨率,并同时保留光谱信息。

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