Sat-NeRF: Learning Multi-View Satellite Photogrammetry With Transient Objects and Shadow Modeling Using RPC Cameras
About
We introduce the Satellite Neural Radiance Field (Sat-NeRF), a new end-to-end model for learning multi-view satellite photogrammetry in the wild. Sat-NeRF combines some of the latest trends in neural rendering with native satellite camera models, represented by rational polynomial coefficient (RPC) functions. The proposed method renders new views and infers surface models of similar quality to those obtained with traditional state-of-the-art stereo pipelines. Multi-date images exhibit significant changes in appearance, mainly due to varying shadows and transient objects (cars, vegetation). Robustness to these challenges is achieved by a shadow-aware irradiance model and uncertainty weighting to deal with transient phenomena that cannot be explained by the position of the sun. We evaluate Sat-NeRF using WorldView-3 images from different locations and stress the advantages of applying a bundle adjustment to the satellite camera models prior to training. This boosts the network performance and can optionally be used to extract additional cues for depth supervision.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Elevation reconstruction | DFC 2019 | JAX 004 Result3.27 | 31 | |
| Elevation reconstruction | IARPA 3D Mapping Challenge | IARPA Metric 0014.63 | 31 | |
| Appearance reconstruction | Satellite Surface Reconstruction IAPRA & JAX scenes | PSNR22.72 | 24 | |
| Height Estimation | Satellite Surface Reconstruction IAPRA & JAX scenes | MAE (m)4.23 | 24 | |
| Satellite Scene Reconstruction | DFC 2019 | MAE [m] (004)1.02 | 8 | |
| Surface Reconstruction | MVS3D | Chamfer Distance (CD)4.43 | 8 | |
| Surface Reconstruction | DFC19 | Chamfer Distance (CD)4.71 | 8 |