Graph-based visual odometry for VSLAM
ISSN: 0143-991X
Article publication date: 16 October 2018
Issue publication date: 7 December 2018
Abstract
Purpose
Typical feature-matching algorithms use only unary constraints on appearances to build correspondences where little structure information is used. Ignoring structure information makes them sensitive to various environmental perturbations. The purpose of this paper is to propose a novel graph-based method that aims to improve matching accuracy by fully exploiting the structure information.
Design/methodology/approach
Instead of viewing a frame as a simple collection of keypoints, the proposed approach organizes a frame as a graph by treating each keypoint as a vertex, where structure information is integrated in edges between vertices. Subsequently, the matching process of finding keypoint correspondence is formulated in a graph matching manner.
Findings
The authors compare it with several state-of-the-art visual simultaneous localization and mapping algorithms on three datasets. Experimental results reveal that the ORB-G algorithm provides more accurate and robust trajectories in general.
Originality/value
Instead of viewing a frame as a simple collection of keypoints, the proposed approach organizes a frame as a graph by treating each keypoint as a vertex, where structure information is integrated in edges between vertices. Subsequently, the matching process of finding keypoint correspondence is formulated in a graph matching manner.
Keywords
Acknowledgements
This work is supported the National Nature Science Foundation of China (61673048 and 61472028), the Fundamental Research Funds for the Central universities (2018JBM015, 2018JBM017 and 2017JBZ108), and the Joint Research Fund for The Ministry of Education of China and China Mobile (MCM20170201).
Citation
Xu, S., Wang, T., Lang, C., Feng, S. and Jin, Y. (2019), "Graph-based visual odometry for VSLAM", Industrial Robot, Vol. 45 No. 5, pp. 679-687. https://doi.org/10.1108/IR-04-2018-0061
Publisher
:Emerald Publishing Limited
Copyright © 2018, Emerald Publishing Limited