遥感
卫星
多光谱图像
强迫(数学)
气象学
图像分辨率
环境科学
卫星图像
海面温度
辐射压力
计算机科学
地理
气候学
地质学
人工智能
气溶胶
物理
天文
作者
Donghang Wu,Weiquan Liu,Bowen Fang,Linwei Chen,Yu Zang,Lei Zhao,Shenlong Wang,Cheng Wang,José Marcato,Jonathan Li
出处
期刊:IEEE Transactions on Geoscience and Remote Sensing
[Institute of Electrical and Electronics Engineers]
日期:2022-01-01
卷期号:60: 1-15
被引量:7
标识
DOI:10.1109/tgrs.2022.3201284
摘要
Estimating urban surface temperature at high resolution is crucial for effective urban planning for climate-driven risks. This high-resolution surface temperature over broader scales can usually be obtained via satellite remote sensing for historical period. However, it can be hard for future predictions. This paper presents a Physics Informed Hierarchical Perception (PIHP) network, a novel approach for accurate, high-resolution and generalizable urban surface temperature estimation. The key to our approach is leveraging the implied temperature-related physics information of the land surface structure from high-resolution multi-spectral satellite images, thus achieving precise estimation or prediction for high spatial resolution urban surface temperature. Specifically, a semantic category histogram is first designed to describe the land surface structures. Based on this, a hierarchical urban surface perception network is proposed to capture the complex relationship between the underlying land surface features, upper atmosphere conditions and the intracity temperature. The proposed PIHP-Net makes it possible to generate models that can generalize across different cities, thus to estimating or predicting high-resolution urban surface temperature when the satellite land surface temperature (LST) observation is not available. Experiments over various cities in different climate regions in China show, for the first time, errors less than 2 Kelvin (for most of the cases) at the high resolution (60-by-60 meters grids), thus making it possible to predict future intracity temperature from forcing meteorology and multi-spectral satellite imagery.
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