Neural Visibility Field for Uncertainty-Driven Active Mapping

17citations
arXiv:2406.06948
17
citations
#1399
in CVPR 2024
of 2716 papers
6
Top Authors
3
Data Points

Abstract

This paper presents Neural Visibility Field (NVF), a novel uncertainty quantification method for Neural Radiance Fields (NeRF) applied to active mapping. Our key insight is that regions not visible in the training views lead to inherently unreliable color predictions by NeRF at this region, resulting in increased uncertainty in the synthesized views. To address this, we propose to use Bayesian Networks to composite position-based field uncertainty into ray-based uncertainty in camera observations. Consequently, NVF naturally assigns higher uncertainty to unobserved regions, aiding robots to select the most informative next viewpoints. Extensive evaluations show that NVF excels not only in uncertainty quantification but also in scene reconstruction for active mapping, outperforming existing methods.

Citation History

Jan 28, 2026
17
Feb 13, 2026
17
Feb 13, 2026
17