RODec 16, 2021

Rail Vehicle Localization and Mapping with LiDAR-Vision-Inertial-GNSS Fusion

arXiv:2112.08563v126 citations
Originality Incremental advance
AI Analysis

This work addresses localization and mapping for rail vehicles, which is an incremental improvement in domain-specific sensor fusion.

The paper tackles the problem of accurate and robust rail vehicle localization and mapping by proposing RailLoMer-V, a GNSS-aided LiDAR-visual-inertial fusion scheme, which achieves real-time performance and robustness in challenging scenarios like railway tunnels over datasets spanning 800 km.

In this paper, we present a global navigation satellite system (GNSS) aided LiDAR-visual-inertial scheme, RailLoMer-V, for accurate and robust rail vehicle localization and mapping. RailLoMer-V is formulated atop a factor graph and consists of two subsystems: an odometer assisted LiDAR-inertial system (OLIS) and an odometer integrated Visual-inertial system (OVIS). Both the subsystem exploits the typical geometry structure on the railroads. The plane constraints from extracted rail tracks are used to complement the rotation and vertical errors in OLIS. Besides, the line features and vanishing points are leveraged to constrain rotation drifts in OVIS. The proposed framework is extensively evaluated on datasets over 800 km, gathered for more than a year on both general-speed and high-speed railways, day and night. Taking advantage of the tightly-coupled integration of all measurements from individual sensors, our framework is accurate to long-during tasks and robust enough to grievously degenerated scenarios (railway tunnels). In addition, the real-time performance can be achieved with an onboard computer.

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