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Uncertainty-driven 3D Gaussian Splatting Active Mapping via Anisotropic Visibility Field

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We present Gaussian Splatting Anisotropic Visibility Field (GAVIS), a novel framework for uncertainty quantification and active mapping in 3DGS. Our key insight is that regions unseen from the training views yield unreliable predictions from the 3DGS. To address this, we introduce a principled and efficient method for quantifying the visibility field in 3DGS, defined as the anisotropic visibility of each particle with respect to the training views, and represented using spherical harmonics. The resulting visibility field is integrated into a Bayesian Network-based uncertainty-aware 3DGS rasterizer, enabling real-time (200 FPS) uncertainty quantification for synthesized views. Active mapping is further performed within a maximum information gain framework building on this formulation. Extensive experiments across diverse environments demonstrate that GAVIS consistently and significantly outperforms prior approaches in both accuracy and efficiency. Moreover, beyond standalone use, our method can be applied post-hoc to improve the performance of existing approaches.

Shangjie Xue, Jesse Dill, Dhruv Ahuja, Frank Dellaert, Panagiotis Tsiotras, Danfei Xu• 2026

Related benchmarks

TaskDatasetResultRank
Active MappingSPACE
PSNR26.14
10
Active MappingGibson
PSNR24.58
10
Uncertainty QuantificationActive Mapping Evaluation
AUSE-D0.205
7
Active MappingNeRF Synth
PSNR24.55
6
Active MappingNeRF Synthetic
PSNR24.26
4
Active MappingHM3D
PSNR23.97
4
Uncertainty QuantificationNeRF Synthetic, Space, Gibson, and HM3D 5 representative scenes
AUSE-D0.224
4
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