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A Novel Method to Estimate Subpixel Temperature by Fusing Solar-Reflective and Thermal-Infrared Remote-Sensing Data With an Artificial Neural Network

机译:通过人工神经网络融合太阳反射和热红外遥感数据估算亚像素温度的新方法

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摘要

Among the multisource data fusing methods, the potential advantages of remote sensing of solar-reflective visible and near-Infrared [(VNIR); 400-900 nm] data and thermal-infrared (TIR) data have not been fully mined. Usually, a linear unmixed method is used for the purpose, which results in low estimation accuracy of subpixel land-surface temperature (LST). In this paper, we propose a novel method to estimate subpixel LST. This approach uses the characteristics of high spatial-resolution advanced spaceborne thermal emission and reflection radiometer (ASTER) VNIR data and the low spatial-resolution TIR data simulated from ASTER temperature product to generate the high spatial-resolution temperature data at a subpixel scale. First, the land-surface parameters (e.g., leaf area index, normalized difference vegetation index (NDVI), soil water content index, and reflectance) were extracted from VNIR data and field measurements. Then, the extracted high resolution of land-surface parameters and the LST were simulated into coarse resolutions. Second, the genetic algorithm and self-organizing feature map artificial neural network (ANN) was utilized to create relationships between land-surface parameters and the corresponding LSTs separately for different land-cover types at coarse spatial-resolution scales. Finally, the ANN-trained relationships were applied in the estimation of subpixel temperatures (at high spatial resolution) from high spatial-resolution land-surface parameters. The two sets of data with different spatial resolutions were simulated using an aggregate resampling algorithm. Experimental results indicate that the accuracy with our method to estimate land-surface subpixel temperature is significantly higher than that with a traditional method that uses the NDVI as an input parameter, and the average error of subpixel temperature is decreased by 2-3 K with our method. This method is a simple and convenient approach to estimate subpixel LST from high spatial-te-nmporal resolution data quickly and effectively.
机译:在多源数据融合方法中,遥感反射太阳光的可见光和近红外[(VNIR); [400-900 nm]数据和热红外(TIR)数据尚未完全开采。通常,为此目的使用线性未混合方法,这导致子像素陆面温度(LST)的估计精度低。在本文中,我们提出了一种估计子像素LST的新方法。这种方法利用了高空间分辨率先进的星载热发射和反射辐射计(ASTER)VNIR数据和从ASTER温度乘积模拟得到的低空间分辨率TIR数据的特性,以亚像素级生成了高空间分辨率的温度数据。首先,从VNIR数据和野外测量中提取出地表参数(例如,叶面积指数,归一化差异植被指数(NDVI),土壤含水量指数和反射率)。然后,将提取的高分辨率地表参数和LST模拟为粗分辨率。其次,利用遗传算法和自组织特征图人工神经网络(ANN)分别在粗糙的空间分辨率尺度上为不同的土地覆被类型创建了地表参数与相应的LST之间的关系。最后,将ANN训练的关系应用于从高空间分辨率的地表参数估算亚像素温度(在高空间分辨率下)。使用聚合重采样算法模拟了具有不同空间分辨率的两组数据。实验结果表明,与传统的以NDVI为输入参数的方法相比,我们估计陆地表面亚像素温度的方法精度要高得多,并且我们的方法能够将亚像素温度的平均误差降低2-3K。方法。该方法是一种简单,便捷的方法,可以快速,有效地从高空间分辨率的数据中估算子像素LST。

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