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arxiv: 2205.12595 · v1 · pith:ZT3UDN5G · submitted 2022-05-25 · cs.RO

Wildcat: Online Continuous-Time 3D Lidar-Inertial SLAM

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classification cs.RO
keywords wildcatlidar-inertialslamrobustnesscontinuous-timemoduleonlinesystems
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We present Wildcat, a novel online 3D lidar-inertial SLAM system with exceptional versatility and robustness. At its core, Wildcat combines a robust real-time lidar-inertial odometry module, utilising a continuous-time trajectory representation, with an efficient pose-graph optimisation module that seamlessly supports both the single- and multi-agent settings. The robustness of Wildcat was recently demonstrated in the DARPA Subterranean Challenge where it outperformed other SLAM systems across various types of sensing-degraded and perceptually challenging environments. In this paper, we extensively evaluate Wildcat in a diverse set of new and publicly available real-world datasets and showcase its superior robustness and versatility over two existing state-of-the-art lidar-inertial SLAM systems.

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Cited by 1 Pith paper

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