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Using a modified HUTS algorithm to downscale Land Surface Temperature retrieved from Landsat-8 imagery: A case study of Xiamen City, China

机译:利用改进的HUTS算法降低Landsat-8影像反演的地表温度:以中国厦门市为例

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Urban heat environment has a close relation with quality of life of urban citizens. Land surface temperature (LST) retrieved from remotely sensed thermal infrared imagery can be used for urban heat environment studies. However, the rather low spatial resolution of currently available remote sensing thermal imagery (e.g., Landsat ETM+, its thermal band is in the spectral range of 10.40-12.51 μm and at 60 m spatial resolution) has become the bottleneck for its further application in the real word. By using the spatial downscaling techniques, different spectral bands with various spatial resolution from the same remote sensor can be integrated and fully utilized, thus the improvement of the spatial resolution of the thermal imagery can be realized. So far, various algorithms or methods for spatial downscaling of remotely sensed thermal images have been put forward. Among them, the HUTS (High-resolution urban thermal sharpener) algorithm, proposed by Dominguez et al. (2011), has been accepted and used by many researchers. However, its applicability in more study areas with more remotely sensed data, especially recently launched data (like Landsat-8 data), still need to be further examined. In this paper, taking Xiamen City, China as the study area, the original HUTS method was modified and improved by taking the following two measures: (1) introducing a new parameter, namely, land surface emissivity; (2) replacing the original scaling factor NDVI with fractional vegetation cover. A Landsat-8 (path 119, row 43) imagery, acquired on August 4, 2013, was used and the revised Generalized Single-channel Method proposed by Jiménez-Muñoz and Sobrino (2014) was applied to retrieve LST in this study. A full assessment and comparison of the original and the modified HUTS algorithms were made, both from the qualitative and the quantitative (by using multiple indices, such as R, RMSE, RMSPE, RASE, and so on) perspectives. The research results showed that, the modified HUTS algorithm, presented in this study, had better performance than the original one, thus was proposed as a useful technique of spatial downscaling of thermal infrared image in future urban heat environment studies.
机译:城市热环境与城市居民的生活质量密切相关。从遥感热红外图像获取的地表温度(LST)可用于城市热环境研究。但是,目前可用的遥感热成像的空间分辨率较低(例如,Landsat ETM +,其热波段在10.40-12.51μm的光谱范围内,在60 m的空间分辨率下)已成为其进一步应用的瓶颈。真实的词。通过使用空间缩小技术,可以集成并充分利用来自同一遥感器的具有各种空间分辨率的不同光谱带,从而可以实现热成像空间分辨率的提高。到目前为止,已经提出了用于遥感热图像的空间缩小的各种算法或方法。其中,Dominguez等人提出的HUTS(高分辨率城市热磨削器)算法。 (2011年),已被许多研究人员接受和使用。但是,其在更多研究领域和更遥感数据中的适用性,尤其是最近启动的数据(如Landsat-8数据),仍需要进一步研究。本文以中国厦门市为研究区域,通过以下两种措施对原先的HUTS方法进行了改进和改进:(1)引入新的参数,即地表发射率; (2)用植被覆盖率代替原始比例因子NDVI。本研究使用了2013年8月4日获得的Landsat-8(路径119,第43行)图像,并使用了Jiménez-Muñoz和Sobrino(2014)提出的经修订的广义单通道方法来检索LST。从定性和定量(通过使用多个指标,例如R,RMSE,RMSPE,RASE等)角度,对原始HUTS算法和改进的HUTS算法进行了全面评估和比较。研究结果表明,本文提出的改进的HUTS算法具有比原始算法更好的性能,因此被提出作为未来城市热环境研究中热红外图像空间缩小的一种有用技术。

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