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The Improvement of Land Cover Classification by Thermal Remote Sensing
2015
Remote Sensing
Land cover classification has been widely investigated in remote sensing for agricultural, ecological and hydrological applications. Landsat images with multispectral bands are commonly used to study the numerous classification methods in order to improve the classification accuracy. Thermal remote sensing provides valuable information to investigate the effectiveness of the thermal bands in extracting land cover patterns. k-NN and Random Forest algorithms were applied to both the single
doi:10.3390/rs70708368
fatcat:idelpeahbrfi3o4l7prz27s7oq