CVMar 8, 2023

Intermediate and Future Frame Prediction of Geostationary Satellite Imagery With Warp and Refine Network

arXiv:2303.04405v14 citationsh-index: 10
Originality Incremental advance
AI Analysis

This addresses the need for higher temporal resolution in satellite imagery for climate and weather applications, though it is incremental as it adapts existing optical flow methods to a specific domain.

The paper tackles the problem of predicting intermediate and future frames in geostationary satellite imagery by proposing WR-Net, which combines optical flow warping with refinement, achieving interpolation from 4-minute to 2-minute intervals and improving future frame prediction.

Geostationary satellite imagery has applications in climate and weather forecasting, planning natural energy resources, and predicting extreme weather events. For precise and accurate prediction, higher spatial and temporal resolution of geostationary satellite imagery is important. Although recent geostationary satellite resolution has improved, the long-term analysis of climate applications is limited to using multiple satellites from the past to the present due to the different resolutions. To solve this problem, we proposed warp and refine network (WR-Net). WR-Net is divided into an optical flow warp component and a warp image refinement component. We used the TV-L1 algorithm instead of deep learning-based approaches to extract the optical flow warp component. The deep-learning-based model is trained on the human-centric view of the RGB channel and does not work on geostationary satellites, which is gray-scale one-channel imagery. The refinement network refines the warped image through a multi-temporal fusion layer. We evaluated WR-Net by interpolation of temporal resolution at 4 min intervals to 2 min intervals in large-scale GK2A geostationary meteorological satellite imagery. Furthermore, we applied WR-Net to the future frame prediction task and showed that the explicit use of optical flow can help future frame prediction.

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