OmniRe: Omni Urban Scene Reconstruction
We introduce OmniRe, a holistic approach for efficiently reconstructing high-fidelity dynamic urban scenes from on-device logs. Recent methods for modeling driving sequences using neural radiance fields or Gaussian Splatting have demonstrated the potential of reconstructing challenging dynamic scene...
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Zusammenfassung: | We introduce OmniRe, a holistic approach for efficiently reconstructing
high-fidelity dynamic urban scenes from on-device logs. Recent methods for
modeling driving sequences using neural radiance fields or Gaussian Splatting
have demonstrated the potential of reconstructing challenging dynamic scenes,
but often overlook pedestrians and other non-vehicle dynamic actors, hindering
a complete pipeline for dynamic urban scene reconstruction. To that end, we
propose a comprehensive 3DGS framework for driving scenes, named OmniRe, that
allows for accurate, full-length reconstruction of diverse dynamic objects in a
driving log. OmniRe builds dynamic neural scene graphs based on Gaussian
representations and constructs multiple local canonical spaces that model
various dynamic actors, including vehicles, pedestrians, and cyclists, among
many others. This capability is unmatched by existing methods. OmniRe allows us
to holistically reconstruct different objects present in the scene,
subsequently enabling the simulation of reconstructed scenarios with all actors
participating in real-time (~60Hz). Extensive evaluations on the Waymo dataset
show that our approach outperforms prior state-of-the-art methods
quantitatively and qualitatively by a large margin. We believe our work fills a
critical gap in driving reconstruction. |
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DOI: | 10.48550/arxiv.2408.16760 |