EnerGS: Energy-Based Gaussian Splatting with Partial Geometric Priors

arXiv cs.CV / 4/30/2026

📰 NewsModels & Research

Key Points

  • The paper introduces EnerGS, an approach for 3D Gaussian Splatting that uses an energy field derived from partially observed geometric evidence.
  • It addresses a key limitation of existing geometric priors (e.g., LiDAR), which can be spatially incomplete and uneven in large outdoor scenes and may harm reconstruction quality.
  • Instead of treating geometry as a hard constraint or direct training limitation, EnerGS applies soft geometric guidance to steer the optimization of Gaussian primitives without overly restricting solutions.
  • Experiments on large-scale outdoor datasets show consistent improvements in photometric reconstruction quality and geometric stability, including under sparse multi-view and monocular settings.
  • The method also helps mitigate overfitting during 3DGS training, improving robustness of the reconstruction pipeline.

Abstract

3D Gaussian Splatting (3DGS) has been widely adopted for scene reconstruction, where training inherently constitutes a highly coupled and non-convex optimization problem. Recent works commonly incorporate geometric priors, such as LiDAR measurements, either for initialization or as training constraints, with the goal of improving photometric reconstruction quality. However, in large-scale outdoor scenarios, such geometric supervision is often spatially incomplete and uneven, which limits its effectiveness as a reliable prior and can even be detrimental to the final reconstruction. To address this challenge, we model partially observable geometry as a continuous energy field induced by geometric evidence and propose EnerGS. Rather than enforcing geometry as a hard constraint, EnerGS provides a soft geometric guidance for the optimization of Gaussian primitives, allowing geometric information to steer the optimization process without directly restricting the solution space. Extensive experiments on large-scale outdoor scenes demonstrate that, under both sparse multi-view and monocular settings, EnerGS consistently improves photometric quality and geometric stability, while effectively mitigating overfitting during 3DGS training.