Neural LiDAR Fields for Novel View Synthesis
About
We present Neural Fields for LiDAR (NFL), a method to optimise a neural field scene representation from LiDAR measurements, with the goal of synthesizing realistic LiDAR scans from novel viewpoints. NFL combines the rendering power of neural fields with a detailed, physically motivated model of the LiDAR sensing process, thus enabling it to accurately reproduce key sensor behaviors like beam divergence, secondary returns, and ray dropping. We evaluate NFL on synthetic and real LiDAR scans and show that it outperforms explicit reconstruct-then-simulate methods as well as other NeRF-style methods on LiDAR novel view synthesis task. Moreover, we show that the improved realism of the synthesized views narrows the domain gap to real scans and translates to better registration and semantic segmentation performance.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| LiDAR Depth Synthesis | KITTI-360 (standard-frequency setting) | RMSE4.6647 | 7 | |
| LiDAR Intensity Synthesis | KITTI-360 (standard-frequency setting) | RMSE0.1565 | 7 | |
| Point Cloud Reconstruction | KITTI-360 (standard-frequency setting) | CD0.578 | 7 | |
| Semantic segmentation | Waymo NVS | Vehicle Recall94.5 | 6 | |
| LiDAR Novel View Synthesis | TownClean | MAE32 | 6 | |
| LiDAR Novel View Synthesis | TownReal | MAE39.2 | 6 | |
| LiDAR Novel View Synthesis | Waymo NVS | MAE32.6 | 6 | |
| LiDAR Novel View Synthesis | Waymo interp. | MAE30.8 | 6 |