Retrieval of Significant Wave Height in Coastal Seas of China from GaoFen-3 Satellites Based on Deep Learning
Highlights
- A deep learning-based significant wave height (SWH) retrieval method in China’s coastal seas from Gaofen-3 Quad-Polarization Stripmap (QPS) mode was developed, achieving an RMSE of 0.33 m and a bias of −0.13 m. The SWH retrieval results from along-track SAR images exhibit good continuity.
- Based on the polarization ratio model, the SWH retrieval method was extend to Fine Stripmap (FS) and Ultra Fine Stripmap (UFS). Evaluation results demonstrate that the SWH retrieved from both FS and UFS data is encouraging, with RMSEs of 0.44 m and 0.39 m, respectively.
- Different from the conventional single-mode retrieval framework, this study introduced a multi-polarization, multi-observation, high-precision SWH retrieval method, enriching SAR SWH retrieval with more encouraging results.
- The method proposed in this study enables the retrieval of SWH in coastal areas, which can provide data support for human activities and climate studies.
Abstract
1. Introduction
2. Data and Methods
2.1. Data
2.1.1. GF-3 SAR Images
2.1.2. Altimeter Wave Height Data
2.1.3. ERA5 Reanalysis Data
2.2. Methods
2.2.1. SAR Image Preprocessing
2.2.2. Training Dataset Generation
2.2.3. Retrieval Model Construction
2.2.4. Retrieval Results Validation
3. Results
3.1. The Evaluation of QPS Mode-Retrieved SWH
3.2. The Evaluation of FS Mode- and UFS Mode-Retrieved SWH
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Mode | Incidence (Degree) | Imaging Swath (km) | Polarization |
|---|---|---|---|
| FS | 19~51 | 50~110 | HH, HV/VV, VH |
| QPS | 19~50 | 20~50 | HH, HV, VH, VV |
| UFS | 21~50 | 30 | HH |
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Sun, F.; Li, X.; Li, X.-M.; Ren, Y.; Wu, K. Retrieval of Significant Wave Height in Coastal Seas of China from GaoFen-3 Satellites Based on Deep Learning. Remote Sens. 2026, 18, 966. https://doi.org/10.3390/rs18060966
Sun F, Li X, Li X-M, Ren Y, Wu K. Retrieval of Significant Wave Height in Coastal Seas of China from GaoFen-3 Satellites Based on Deep Learning. Remote Sensing. 2026; 18(6):966. https://doi.org/10.3390/rs18060966
Chicago/Turabian StyleSun, Fengjia, Xing Li, Xiao-Ming Li, Yongzheng Ren, and Ke Wu. 2026. "Retrieval of Significant Wave Height in Coastal Seas of China from GaoFen-3 Satellites Based on Deep Learning" Remote Sensing 18, no. 6: 966. https://doi.org/10.3390/rs18060966
APA StyleSun, F., Li, X., Li, X.-M., Ren, Y., & Wu, K. (2026). Retrieval of Significant Wave Height in Coastal Seas of China from GaoFen-3 Satellites Based on Deep Learning. Remote Sensing, 18(6), 966. https://doi.org/10.3390/rs18060966

