Grounding and Enhancing Grid-based Models for Neural Fields
About
Many contemporary studies utilize grid-based models for neural field representation, but a systematic analysis of grid-based models is still missing, hindering the improvement of those models. Therefore, this paper introduces a theoretical framework for grid-based models. This framework points out that these models' approximation and generalization behaviors are determined by grid tangent kernels (GTK), which are intrinsic properties of grid-based models. The proposed framework facilitates a consistent and systematic analysis of diverse grid-based models. Furthermore, the introduced framework motivates the development of a novel grid-based model named the Multiplicative Fourier Adaptive Grid (MulFAGrid). The numerical analysis demonstrates that MulFAGrid exhibits a lower generalization bound than its predecessors, indicating its robust generalization performance. Empirical studies reveal that MulFAGrid achieves state-of-the-art performance in various tasks, including 2D image fitting, 3D signed distance field (SDF) reconstruction, and novel view synthesis, demonstrating superior representation ability. The project website is available at https://sites.google.com/view/cvpr24-2034-submission/home.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Novel View Synthesis | Tanks&Temples (test) | PSNR22.45 | 239 | |
| Novel View Synthesis | LLFF (test) | PSNR27.5 | 79 | |
| Novel View Synthesis | Mip-NeRF360 (test) | PSNR29.11 | 58 | |
| Novel View Synthesis | Synthetic-NeRF (test) | PSNR34.69 | 48 | |
| Novel View Synthesis | SFMB (test) | PSNR30.12 | 8 | |
| 2D Image Fitting | DIV2K (val) | PSNR56.19 | 7 | |
| 3D signed distance field (SDF) reconstruction | 3D models dataset sampled (test) | IoU99.95 | 5 |