cs.AI updates on arXiv.org 07月10日 12:05
A Probabilistic Approach to Uncertainty Quantification Leveraging 3D Geometry
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本文提出了一种名为BayesSDF的新框架,用于量化神经隐式SDF模型的不确定性,针对计算效率、可扩展性和几何一致性等挑战,通过Laplace近似和Hessian指标,实现表面感知的不确定性估计,在合成和真实世界数据集上优于现有方法。

arXiv:2507.06269v1 Announce Type: cross Abstract: Quantifying uncertainty in neural implicit 3D representations, particularly those utilizing Signed Distance Functions (SDFs), remains a substantial challenge due to computational inefficiencies, scalability issues, and geometric inconsistencies. Existing methods typically neglect direct geometric integration, leading to poorly calibrated uncertainty maps. We introduce BayesSDF, a novel probabilistic framework for uncertainty quantification in neural implicit SDF models, motivated by scientific simulation applications with 3D environments (e.g., forests) such as modeling fluid flow through forests, where precise surface geometry and awareness of fidelity surface geometric uncertainty are essential. Unlike radiance-based models such as NeRF or 3D Gaussian splatting, which lack explicit surface formulations, SDFs define continuous and differentiable geometry, making them better suited for physical modeling and analysis. BayesSDF leverages a Laplace approximation to quantify local surface instability via Hessian-based metrics, enabling computationally efficient, surface-aware uncertainty estimation. Our method shows that uncertainty predictions correspond closely with poorly reconstructed geometry, providing actionable confidence measures for downstream use. Extensive evaluations on synthetic and real-world datasets demonstrate that BayesSDF outperforms existing methods in both calibration and geometric consistency, establishing a strong foundation for uncertainty-aware 3D scene reconstruction, simulation, and robotic decision-making.

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相关标签

BayesSDF 神经隐式SDF 不确定性量化 几何一致性 表面感知
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