Title :
Disaggregation of Remotely Sensed Land Surface Temperature: A Generalized Paradigm
Author :
Yunhao Chen ; Wenfeng Zhan ; Jinling Quan ; Ji Zhou ; Xiaolin Zhu ; Hao Sun
Author_Institution :
State Key Lab. of Earth Surface Processes & Resource Ecology, Beijing Normal Univ., Beijing, China
Abstract :
The environmental monitoring of earth surfaces requires land surface temperatures (LSTs) with high temporal and spatial resolutions. The disaggregation of LST (DLST) is an effective technique to obtain high-quality LSTs by incorporating two subbranches, including thermal sharpening (TSP) and temperature unmixing (TUM). Although great progress has been made on DLST, the further practice requires an in-depth theoretical paradigm designed to generalize DLST and then to guide future research before proceeding further. We thus proposed a generalized paradigm for DLST through a conceptual framework (C-Frame) and a theoretical framework (T-Frame). This was accomplished through a Euclidean paradigm starting from three basic laws summarized from previous DLST methods: the Bayesian theorem, Tobler´s first law of geography, and surface energy balance. The C-Frame included a physical explanation of DLST, and the T-Frame was created by construing a series of assumptions from the three basic laws. Two concrete examples were provided to show the advantage of this generalization. We further derived the linear instance of this paradigm based on which two classical DLST methods were analyzed. This study finally discussed the implications of this paradigm to closely related topics in remote sensing. This paradigm develops processes to improve an understanding of DLST, and it could be used for guiding the design of future DLST methods.
Keywords :
Bayes methods; environmental monitoring (geophysics); land surface temperature; remote sensing; surface energy; Bayesian theorem; C-frame; DLST methods; Euclidean paradigm; LST disaggregation; T-frame; Tobler first law of geography; earth surfaces; environmental monitoring; high spatial resolution; high temporal resolution; high-quality land surface temperatures; remotely sensed land surface temperature; surface energy balance; temperature unmixing; thermal sharpening; Bayes methods; Kernel; Land surface; Land surface temperature; Remote sensing; Spatial resolution; Temperature sensors; Disaggregation; generalized paradigm; land surface temperature (LST); temperature unmixing (TUM); thermal remote sensing; thermal sharpening (TSP);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2013.2294031