Appearance Decomposition Gaussian Splatting for Multi-Traversal Reconstruction
About
Multi-traversal scene reconstruction is important for high-fidelity autonomous driving simulation and digital twin construction. This task involves integrating multiple sequences captured from the same geographical area at different times. In this context, a primary challenge is the significant appearance inconsistency across traversals caused by varying illumination and environmental conditions, despite the shared underlying geometry. This paper presents ADM-GS (Appearance Decomposition Gaussian Splatting for Multi-Traversal Reconstruction), a framework that applies an explicit appearance decomposition to the static background to alleviate appearance entanglement across traversals. For the static background, we decompose the appearance into traversal-invariant material, representing intrinsic material properties, and traversal-dependent illumination, capturing lighting variations. Specifically, we propose a neural light field that utilizes a frequency-separated hybrid encoding strategy. By incorporating surface normals and explicit reflection vectors, this design separately captures low-frequency diffuse illumination and high-frequency specular reflections. Quantitative evaluations on the Argoverse 2 and Waymo Open datasets demonstrate the effectiveness of ADM-GS. In multi-traversal experiments, our method achieves a +0.98 dB PSNR improvement over existing latent-based baselines while producing more consistent appearance across traversals. Code will be available at https://github.com/IRMVLab/ADM-GS.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Novel View Synthesis | Argoverse 2 (Single-Traversal) | PSNR30.14 | 6 | |
| Novel View Synthesis | Waymo Open (Single-Traversal) | PSNR28.91 | 6 | |
| Scene Reconstruction | Argoverse Single-Traversal 2 | PSNR30.72 | 6 | |
| Scene Reconstruction | Waymo Open (Single-Traversal) | PSNR29.93 | 6 | |
| Multi-Traversal Reconstruction | Argoverse multi-traversal 2 (test) | PSNR27.38 | 3 |