6533b85dfe1ef96bd12bf1f0

RESEARCH PRODUCT

Evaluation of Disaggregation Methods for Downscaling MODIS Land Surface Temperature to Landsat Spatial Resolution in Barrax Test Site

Vicente CasellesJuan M SanchezMar Bisquert

subject

Atmospheric Science010504 meteorology & atmospheric sciencesMean squared errorNear-infrared spectroscopyTemperature0211 other engineering and technologies02 engineering and technology01 natural sciencesNormalized Difference Vegetation IndexVNIRRemote SensingSpectroradiometerImage resolutionImage enhancementLinear regressionEnvironmental scienceComputers in Earth SciencesImage resolution021101 geological & geomatics engineering0105 earth and related environmental sciencesRemote sensingDownscaling

description

Thermal infrared (TIR) data are usually acquired at a coarser spatial resolution (CR) than visible and near infrared (VNIR). Several disaggregation methods have been recently developed to enhance the TIR spatial resolution using VNIR data. These approaches are based on the retrieval of a relation between TIR and VNIR data at CR, or training of a neural network, to be applied at the fine resolution afterward. In this work, different disaggregation methods are applied to the combination of two different sensors in the experimental test site of Barrax, Spain. The main objective is to test the feasibility of these techniques when applied to satellites provided with no TIR bands. Landsat and moderate imaging spectroradiometer (MODIS) images were used for this work. Land surface temperature (LST) from MODIS images was disaggregated to the Landsat spatial resolution using Landsat VNIR data. Landsat LST was used for the validation and comparison of the different techniques. Best results were obtained by the method based on a linear regression between normalized difference vegetation index (NDVI) and LST. An average ${\rm RMSE} ={\pm }1.9\,\text{K}$ was observed between disaggregated and Landsat LST from four different dates in a study area of $120\;\text{km}^{2}$ .

https://doi.org/10.1109/jstars.2016.2519099