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NARUTO: Neural Active Reconstruction from Uncertain Target Observations

Authors :
Feng, Ziyue
Zhan, Huangying
Chen, Zheng
Yan, Qingan
Xu, Xiangyu
Cai, Changjiang
Li, Bing
Zhu, Qilun
Xu, Yi
Publication Year :
2024

Abstract

We present NARUTO, a neural active reconstruction system that combines a hybrid neural representation with uncertainty learning, enabling high-fidelity surface reconstruction. Our approach leverages a multi-resolution hash-grid as the mapping backbone, chosen for its exceptional convergence speed and capacity to capture high-frequency local features.The centerpiece of our work is the incorporation of an uncertainty learning module that dynamically quantifies reconstruction uncertainty while actively reconstructing the environment. By harnessing learned uncertainty, we propose a novel uncertainty aggregation strategy for goal searching and efficient path planning. Our system autonomously explores by targeting uncertain observations and reconstructs environments with remarkable completeness and fidelity. We also demonstrate the utility of this uncertainty-aware approach by enhancing SOTA neural SLAM systems through an active ray sampling strategy. Extensive evaluations of NARUTO in various environments, using an indoor scene simulator, confirm its superior performance and state-of-the-art status in active reconstruction, as evidenced by its impressive results on benchmark datasets like Replica and MP3D.<br />Comment: Accepted to CVPR2024. Project page: https://oppo-us-research.github.io/NARUTO-website/. Code: https://github.com/oppo-us-research/NARUTO

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.18771
Document Type :
Working Paper