GaussianFormer3D: Multi-Modal Gaussian-based Semantic Occupancy Prediction with 3D Deformable Attention
About
3D semantic occupancy prediction is essential for achieving safe, reliable autonomous driving and robotic navigation. Compared to camera-only perception systems, multi-modal pipelines, especially LiDAR-camera fusion methods, can produce more accurate and fine-grained predictions. Although voxel-based scene representations are widely used for semantic occupancy prediction, 3D Gaussians have emerged as a continuous and significantly more compact alternative. In this work, we propose a multi-modal Gaussian-based semantic occupancy prediction framework utilizing 3D deformable attention, namely GaussianFormer3D. We introduce a voxel-to-Gaussian initialization strategy that provides 3D Gaussians with accurate geometry priors from LiDAR data, and design a LiDAR-guided 3D deformable attention mechanism to refine these Gaussians using LiDAR-camera fusion features in a lifted 3D space. Extensive experiments on real-world on-road and off-road autonomous driving datasets demonstrate that GaussianFormer3D achieves state-of-the-art prediction performance with reduced memory consumption and improved efficiency.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Occupancy Prediction | Occ3D-nuScenes (val) | mIoU4.64e+3 | 144 | |
| Semantic Occupancy Prediction | Occ3D (val) | mIoU46.4 | 37 | |
| 3D Semantic Occupancy Prediction | SurroundOcc (val) | mIoU27.1 | 36 | |
| 3D Semantic Occupancy Prediction | SurroundOcc-nuScenes (val) | IoU43.3 | 31 | |
| 3D Semantic Occupancy Prediction | SurroundOcc-nuScenes rainy scenario (val) | mIoU25.2 | 26 | |
| 3D Semantic Occupancy Prediction | RELLIS3D-WildOcc (test) | mIoU13.1 | 5 | |
| 3D Semantic Occupancy Prediction | SurroundOcc Night (val) | mIoU15.5 | 4 | |
| 3D Semantic Occupancy Prediction | RELLIS3D-WildOcc (val) | IoU29.5 | 2 |