Cloud-Free Sea-Surface-Temperature Prediction from Satellite Observations

Cloud-Free Sea-Surface-Temperature Prediction from Satellite Observations
2022.09.21
Sea-surface temperature (SST) images obtained by satellites contain noise and missing SSTs due to cloud covers. We propose a method for reconstructing denoised cloud-free SST images via deep-learning-based image inpainting. For denoizing, we use data-assimilation images to train a reconstruction network by considering the physical correctness of SSTs. For reconstruction stability, we introduce anomaly inpainting network, which does not directly complete missing SSTs but estimates the difference between the unobserved SSTs and the average SSTs. SSTs do not fluctuate much over a few days; thus, we can use recent average SSTs as a rough estimation of SSTs and can assume that the SST difference will be within a specific range. We conducted experiments to evaluate our method with satellite SST images and in situ SST data. The results indicate that our method with anomaly inpainting network qualitatively and quantitatively outperformed conventional SST image inpainting methods.

Papers

  • "Cloud-Free Sea-Surface-Temperature Image Reconstruction From Anomaly Inpainting Network", Nobuyuki Hirahara, Motoharu Sonogashira, Masaaki Iiyama, IEEE Transactions on Geoscience and Remote Sensing, Vol.60, pp.1-11, 2021-09. DOI: 10.1109/TGRS.2021.3111649 https://ieeexplore.ieee.org/document/9542940