EnerGS: Energy-Based Gaussian Splatting with Partial Geometric Priors
arXiv cs.CV / 4/30/2026
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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.
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