sekilab/WindSR_Dataset
WindSR Dataset contains more than 22,000 pairs of HR/LR wind speed images, which are processed using the NASA's GEOS-5 Nature Run dataset. This dataset is useful for studying super-resolution for data collected using satellites rather natural RGB images.
This dataset helps scientists and researchers studying atmospheric conditions to improve the detail of satellite wind speed maps. It provides over 22,000 pairs of high-resolution (7 km) and low-resolution (28 km) wind speed images derived from NASA's GEOS-5 Nature Run, enabling the development of models that can infer fine-grained wind patterns from coarser satellite data. Researchers in atmospheric science, meteorology, and climate modeling would use this.
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Use this if you need to train or evaluate models that enhance the spatial resolution of satellite-derived wind speed data.
Not ideal if you are working with natural RGB images or other types of satellite data, as this dataset is specifically for wind speed measurements.
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Jan 18, 2024
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