Abstract
Estimating the pose of a large set of fixed indoor cameras is a requirement for certain applications in augmented reality, autonomous navigation, video surveillance, and logistics. However,
accurately mapping the positions of these cameras remains an unsolved problem. While providing
partial solutions, existing alternatives are limited by their dependence on distinct environmental
features, the requirement for large overlapping camera views, and specific conditions. This paper
introduces a novel approach to estimating the pose of a large set of cameras using a small subset
of fiducial markers printed on regular pieces of paper. By placing the markers in areas visible to
multiple cameras, we can obtain an initial estimation of the pair-wise spatial relationship between
them. The markers can be moved throughout the environment to obtain the relationship between
all cameras, thus creating a graph connecting all cameras. In the final step, our method performs a
full optimization, minimizing the reprojection errors of the observed markers and enforcing physical
constraints, such as camera and marker coplanarity and control points. We validated our approach
using novel artificial and real datasets with varying levels of complexity. Our experiments demonstrated superior performance over existing state-of-the-art techniques and increased effectiveness in
real-world applications. Accompanying this paper, we provide the research community with access
to our code, tutorials, and an application framework to support the deployment of our methodology.
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
URL external
Date
Description
Citation
García-Ruiz, P.; Romero-Ramirez, F.J.; Muñoz-Salinas, R.; Marín-Jiménez, M.J.; Medina-Carnicer, R. Large-Scale Indoor Camera Positioning Using Fiducial Markers. Sensors 2024, 24, 4303. https://doi.org/10.3390/s24134303
Collections
Endorsement
Review
Supplemented By
Referenced By
Document viewer
Select a file to preview:
Reload



