Sea surface wind (SSW) is a crucial parameter for meteorological and oceanographic research, and accurate observation of SSW is valuable for a wide range of applications. However, most existing SSW data products are at a coarse spatial resolution, which is insufficient, especially for regional or local studies. Therefore, in this paper, to derive finer-resolution estimates of SSW, we present a novel statistical downscaling approach for satellite SSW based on generative adversarial networks and dual learning scheme, taking WindSat as a typical example. The dual learning scheme performs a primal task to reconstruct high resolution SSW, and a dual task to estimate the degradation kernels, which form a closed loop and are simultaneously learned...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
In this paper, we present the novel approach for the downscaling of of near-surface winds in the Nor...
International audienceGridded sea surface height (SSH) maps estimated from satellite altimetry are w...
International audienceGridded sea surface height (SSH) maps estimated from satellite altimetry are w...
International audienceGridded sea surface height (SSH) maps estimated from satellite altimetry are w...
International audienceThe availability of sea surface wind conditions with a high-resolution space-t...
International audienceThe availability of sea surface wind conditions with a high-resolution space-t...
International audienceThe availability of sea surface wind conditions with a high-resolution space-t...
The availability of sea surface wind conditions with a high-resolution (HR) space-time sampling is a...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
In this paper, we present the novel approach for the downscaling of of near-surface winds in the Nor...
International audienceGridded sea surface height (SSH) maps estimated from satellite altimetry are w...
International audienceGridded sea surface height (SSH) maps estimated from satellite altimetry are w...
International audienceGridded sea surface height (SSH) maps estimated from satellite altimetry are w...
International audienceThe availability of sea surface wind conditions with a high-resolution space-t...
International audienceThe availability of sea surface wind conditions with a high-resolution space-t...
International audienceThe availability of sea surface wind conditions with a high-resolution space-t...
The availability of sea surface wind conditions with a high-resolution (HR) space-time sampling is a...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...
International audienceWe present a deep learning method to downscale low-resolution geophysical fiel...