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Semantic Nearest Neighbor Fields Monocular Edge Visual-Odometry

Authors :
Wu, Xiaolong
Benbihi, Assia
Richard, Antoine
Pradalier, Cedric
Publication Year :
2019

Abstract

Recent advances in deep learning for edge detection and segmentation opens up a new path for semantic-edge-based ego-motion estimation. In this work, we propose a robust monocular visual odometry (VO) framework using category-aware semantic edges. It can reconstruct large-scale semantic maps in challenging outdoor environments. The core of our approach is a semantic nearest neighbor field that facilitates a robust data association of edges across frames using semantics. This significantly enlarges the convergence radius during tracking phases. The proposed edge registration method can be easily integrated into direct VO frameworks to estimate photometrically, geometrically, and semantically consistent camera motions. Different types of edges are evaluated and extensive experiments demonstrate that our proposed system outperforms state-of-art indirect, direct, and semantic monocular VO systems.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1904.00738
Document Type :
Working Paper