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Digging into Depth Priors for Outdoor Neural Radiance Fields

Authors :
Wang, Chen
Sun, Jiadai
Liu, Lina
Wu, Chenming
Shen, Zhelun
Wu, Dayan
Dai, Yuchao
Zhang, Liangjun
Publication Year :
2023

Abstract

Neural Radiance Fields (NeRF) have demonstrated impressive performance in vision and graphics tasks, such as novel view synthesis and immersive reality. However, the shape-radiance ambiguity of radiance fields remains a challenge, especially in the sparse viewpoints setting. Recent work resorts to integrating depth priors into outdoor NeRF training to alleviate the issue. However, the criteria for selecting depth priors and the relative merits of different priors have not been thoroughly investigated. Moreover, the relative merits of selecting different approaches to use the depth priors is also an unexplored problem. In this paper, we provide a comprehensive study and evaluation of employing depth priors to outdoor neural radiance fields, covering common depth sensing technologies and most application ways. Specifically, we conduct extensive experiments with two representative NeRF methods equipped with four commonly-used depth priors and different depth usages on two widely used outdoor datasets. Our experimental results reveal several interesting findings that can potentially benefit practitioners and researchers in training their NeRF models with depth priors. Project Page: https://cwchenwang.github.io/outdoor-nerf-depth<br />Comment: Accepted to ACM MM 2023. Project Page: https://cwchenwang.github.io/outdoor-nerf-depth

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.04413
Document Type :
Working Paper