Deep Generative Modeling of LiDAR Data
About
Building models capable of generating structured output is a key challenge for AI and robotics. While generative models have been explored on many types of data, little work has been done on synthesizing lidar scans, which play a key role in robot mapping and localization. In this work, we show that one can adapt deep generative models for this task by unravelling lidar scans into a 2D point map. Our approach can generate high quality samples, while simultaneously learning a meaningful latent representation of the data. We demonstrate significant improvements against state-of-the-art point cloud generation methods. Furthermore, we propose a novel data representation that augments the 2D signal with absolute positional information. We show that this helps robustness to noisy and imputed input; the learned model can recover the underlying lidar scan from seemingly uninformative data
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Unconditional LiDAR Generation | KITTI360 (val) | FSVD129.9 | 11 | |
| LiDAR Scene Generation | KITTI-360 (val) | FRD2.26e+3 | 9 | |
| Unconditional LiDAR Generation | KITTI-360 19 | FRD2.26e+3 | 8 | |
| LiDAR Generation | nuScenes (val) | MMD11 | 6 | |
| LiDAR Scene Generation | KITTI-360 (sequences 0-1) | MMD_BEV0.0012 | 5 |