2023
DOI: 10.3390/rs15061481
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Information Fusion for Spaceborne GNSS-R Sea Surface Height Retrieval Using Modified Residual Multimodal Deep Learning Method

Abstract: Traditional spaceborne Global Navigation Satellite Systems Reflectometry (GNSS-R) sea surface height (SSH) retrieval methods have the disadvantages of complicated error models, low retrieval accuracy, and difficulty using full DDM information. To compensate for these deficiencies while considering the heterogeneity of the input data, this paper proposes an end-to-end Modified Residual Multimodal Deep Learning (MRMDL) method that can utilize the entire range of DDM information. First, the MRMDL method is constr… Show more

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Cited by 5 publications
(1 citation statement)
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“…The raw counts of the example DDMs are displayed in Figure 4 for the CYGNSS and FY-3E platforms. Currently, most GNSS-R ocean altimetry studies depend on the DTU global ocean tide model to establish SSHs as the ground-truth data [48]. The DTU global SSH model is constructed from a synthesis of data collected from diverse altimetry satellites [49].…”
Section: Machine Learning Ssh Retrieved Model 221 Dataset Preparationmentioning
confidence: 99%
“…The raw counts of the example DDMs are displayed in Figure 4 for the CYGNSS and FY-3E platforms. Currently, most GNSS-R ocean altimetry studies depend on the DTU global ocean tide model to establish SSHs as the ground-truth data [48]. The DTU global SSH model is constructed from a synthesis of data collected from diverse altimetry satellites [49].…”
Section: Machine Learning Ssh Retrieved Model 221 Dataset Preparationmentioning
confidence: 99%