RayFormer: Modeling Inter- and Intra-Ray Similarity for NeRF-Based Video Snapshot Compressive Imaging
About
Video snapshot compressive imaging (SCI) enables the reconstruction of dynamic scenes from a single snapshot measurement. Recently, NeRF-based methods have shown promising reconstruction performance. However, such methods typically adopt random ray sampling strategies and fail to capture content structural similarities, resulting in limited reconstruction quality. To address these issues, we first propose a patch-level ray sampling strategy to enable the modeling of content structure. Then, we propose an Inter- and Intra-Ray Transformer (RayFormer) to capture the structural similarities, modeling both inter-ray similarities among spatially neighboring points at the same depth and intra-ray correlations between adjacent points along the viewing ray. Finally, benefiting from the patch-level sampling strategy, the total variation prior is incorporated into the objective function to enhance spatial smoothness and suppress artifacts. Experiments in both simulated and real-world scenes demonstrate that the proposed method achieves state-of-the-art (SOTA) reconstruction performance.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video SCI Reconstruction | Airplants synthetic scene | PSNR31.49 | 5 | |
| Video SCI Reconstruction | Hotdog synthetic scene | PSNR33.92 | 5 | |
| Video SCI Reconstruction | Cozy2room synthetic scene | PSNR33.37 | 5 | |
| Video SCI Reconstruction | Tanabata scene (synthetic) | PSNR37.83 | 5 | |
| Video SCI Reconstruction | Vender scene synthetic | PSNR37.05 | 5 | |
| Video SCI Reconstruction | Factory synthetic scene | PSNR36.58 | 5 | |
| Video Snapshot Compressive Imaging | Video SCI | Parameters1.9 | 2 |