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Teach and Repeat Navigation: A Robust Control Approach

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Robot navigation requires an autonomy pipeline that is robust to environmental changes and effective in varying conditions. Teach and Repeat (T&R) navigation has shown high performance in autonomous repeated tasks under challenging circumstances, but research within T&R has predominantly focused on motion planning as opposed to motion control. In this paper, we propose a novel T&R system based on a robust motion control technique for a skid-steering mobile robot using sliding-mode control that effectively handles uncertainties that are particularly pronounced in the T&R task, where sensor noises, parametric uncertainties, and wheel-terrain interaction are common challenges. We first theoretically demonstrate that the proposed T&R system is globally stable and robust while considering the uncertainties of the closed-loop system. When deployed on a Clearpath Jackal robot, we then show the global stability of the proposed system in both indoor and outdoor environments covering different terrains, outperforming previous state-of-the-art methods in terms of mean average trajectory error and stability in these challenging environments. This paper makes an important step towards long-term autonomous T&R navigation with ensured safety guarantees.

Payam Nourizadeh, Michael Milford, Tobias Fischer• 2023

Related benchmarks

TaskDatasetResultRank
Visual Teach and Repeat NavigationTrack 1 Indoor
Cross-Track Error (XTE)4.14
10
Visual Teach and Repeat NavigationTrack 4 Outdoor
Cross-Track Error (XTE)5.23
10
Visual Teach and Repeat NavigationTrack 6 Outdoor, Night-time
Cross-Track Error (XTE)5.8
10
Visual Teach and Repeat NavigationTrack 2 Indoor
Cross-Track Error (XTE)8.05
10
Visual Teach and Repeat NavigationTrack 5 Outdoor
Cross-Track Error (XTE)15.62
10
Visual Teach and Repeat NavigationTrack 3 Indoor
Cross-Track Error (XTE)9.67
10
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