ROCVNov 13, 2019

Visual-Inertial Localization for Skid-Steering Robots with Kinematic Constraints

arXiv:1911.05787v121 citations
Originality Incremental advance
AI Analysis

This work addresses practical deployment challenges for mobile robots in rough terrain, though it is incremental by adapting existing methods to a specific robot type.

The paper tackled the problem of visual-inertial localization for skid-steering robots by integrating kinematic constraints into a state estimator, resulting in improved accuracy validated across different terrains.

While visual localization or SLAM has witnessed great progress in past decades, when deploying it on a mobile robot in practice, few works have explicitly considered the kinematic (or dynamic) constraints of the real robotic system when designing state estimators. To promote the practical deployment of current state-of-the-art visual-inertial localization algorithms, in this work we propose a low-cost kinematics-constrained localization system particularly for a skid-steering mobile robot. In particular, we derive in a principle way the robot's kinematic constraints based on the instantaneous centers of rotation (ICR) model and integrate them in a tightly-coupled manner into the sliding-window bundle adjustment (BA)-based visual-inertial estimator. Because the ICR model parameters are time-varying due to, for example, track-to-terrain interaction and terrain roughness, we estimate these kinematic parameters online along with the navigation state. To this end, we perform in-depth the observability analysis and identify motion conditions under which the state/parameter estimation is viable. The proposed kinematics-constrained visual-inertial localization system has been validated extensively in different terrain scenarios.

Foundations

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