2017
DOI: 10.1155/2017/2048098
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Multisensor Fusion of Landsat Images for High‐Resolution Thermal Infrared Images Using Sparse Representations

Abstract: Land surface temperature (LST) is an important parameter in the analysis of climate and human-environment interactions. Landsat Earth observation satellite data including a thermal band have been used for environmental research and applications; however, the spatial resolution of this thermal band is relatively low. This study investigates an efficient method of fusing Landsat panchromatic and thermal infrared images using a sparse representation (SR) technique. The application of SR is used for the estimation… Show more

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Cited by 5 publications
(4 citation statements)
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“…Regional and local processes have significant implications for household vulnerability [91], thus the study and management of socio-ecologic systems should be conducted with stakeholders in mind not only within the domains of HEI and HDGC. Emerging or underutilized methodologies and technologies such as thermal sensing [105,106], digital soil mapping [107], citizen science [72,108], UAVs, cloud computing, mobile mapping [108], or the use of "humans as sensors" [109,110] can guide informed decision-making in areas where data is hard to collect due to variability in socio-ecological settings [108] and will enhance the relevancy of future HDGC and HEI studies. The ability to run fast and complex computations based on long timeseries of remote sensing and environmental data in virtual or cloud-based environments such as Google Earth Engine or other National Aeronautical and Space Agency applications (Application for Extracting and Exploring Analysis Ready Samples-AppEEARS), for instance, will likely open up the specialized field of remote sensing to more social science applications and integrations.…”
Section: Current Directions and Emerging Trends In The Remote Sensingmentioning
confidence: 99%
“…Regional and local processes have significant implications for household vulnerability [91], thus the study and management of socio-ecologic systems should be conducted with stakeholders in mind not only within the domains of HEI and HDGC. Emerging or underutilized methodologies and technologies such as thermal sensing [105,106], digital soil mapping [107], citizen science [72,108], UAVs, cloud computing, mobile mapping [108], or the use of "humans as sensors" [109,110] can guide informed decision-making in areas where data is hard to collect due to variability in socio-ecological settings [108] and will enhance the relevancy of future HDGC and HEI studies. The ability to run fast and complex computations based on long timeseries of remote sensing and environmental data in virtual or cloud-based environments such as Google Earth Engine or other National Aeronautical and Space Agency applications (Application for Extracting and Exploring Analysis Ready Samples-AppEEARS), for instance, will likely open up the specialized field of remote sensing to more social science applications and integrations.…”
Section: Current Directions and Emerging Trends In The Remote Sensingmentioning
confidence: 99%
“…It depends on the albedo, the vegetation cover and different types of land covers (Kumar et al, 2013). Thermal infrared bands are important data in climate research, weather forecast, hydrologic, ecological, urban climate, agricultural, geothermal and many other studies (Jin and Han, 2017).…”
Section: Introductionmentioning
confidence: 99%
“…Multi-resolution analysis is part of transform domain methods in pixel level image fusion, including discrete wavelet (DWT), curvelet (CVT), contourlet (CT), nonsubsampled contourlet (NSCT) and sharp frequency localization contourlet transforms (SFLCT) (Li et al, 2010). Jin and Han (2017) fused Landsat 7 panchromatic and thermal infrared images. They did this using sparse representation technique.…”
Section: Introductionmentioning
confidence: 99%
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