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RenderNet: Visual Relocalization Using Virtual Viewpoints in Large-Scale Indoor Environments

Authors :
Zhang, Jiahui
Tang, Shitao
Qiu, Kejie
Huang, Rui
Fang, Chuan
Cui, Le
Dong, Zilong
Zhu, Siyu
Tan, Ping
Publication Year :
2022

Abstract

Visual relocalization has been a widely discussed problem in 3D vision: given a pre-constructed 3D visual map, the 6 DoF (Degrees-of-Freedom) pose of a query image is estimated. Relocalization in large-scale indoor environments enables attractive applications such as augmented reality and robot navigation. However, appearance changes fast in such environments when the camera moves, which is challenging for the relocalization system. To address this problem, we propose a virtual view synthesis-based approach, RenderNet, to enrich the database and refine poses regarding this particular scenario. Instead of rendering real images which requires high-quality 3D models, we opt to directly render the needed global and local features of virtual viewpoints and apply them in the subsequent image retrieval and feature matching operations respectively. The proposed method can largely improve the performance in large-scale indoor environments, e.g., achieving an improvement of 7.1\% and 12.2\% on the Inloc dataset.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2207.12579
Document Type :
Working Paper