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Fault-Tolerant Multi-Modal Localization of Multi-Robots on Matrix Lie Groups

1 May 2025
Mahboubeh Zarei
Robin Chhabra
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Abstract

Consistent localization of cooperative multi-robot systems during navigation presents substantial challenges. This paper proposes a fault-tolerant, multi-modal localization framework for multi-robot systems on matrix Lie groups. We introduce novel stochastic operations to perform composition, differencing, inversion, averaging, and fusion of correlated and non-correlated estimates on Lie groups, enabling pseudo-pose construction for filter updates. The method integrates a combination of proprioceptive and exteroceptive measurements from inertial, velocity, and pose (pseudo-pose) sensors on each robot in an Extended Kalman Filter (EKF) framework. The prediction step is conducted on the Lie group SE2(3)×R3×R3\mathbb{SE}_2(3) \times \mathbb{R}^3 \times \mathbb{R}^3SE2​(3)×R3×R3, where each robot's pose, velocity, and inertial measurement biases are propagated. The proposed framework uses body velocity, relative pose measurements from fiducial markers, and inter-robot communication to provide scalable EKF update across the network on the Lie group SE(3)×R3\mathbb{SE}(3) \times \mathbb{R}^3SE(3)×R3. A fault detection module is implemented, allowing the integration of only reliable pseudo-pose measurements from fiducial markers. We demonstrate the effectiveness of the method through experiments with a network of wheeled mobile robots equipped with inertial measurement units, wheel odometry, and ArUco markers. The comparison results highlight the proposed method's real-time performance, superior efficiency, reliability, and scalability in multi-robot localization, making it well-suited for large-scale robotic systems.

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@article{zarei2025_2505.00842,
  title={ Fault-Tolerant Multi-Modal Localization of Multi-Robots on Matrix Lie Groups },
  author={ Mahboubeh Zarei and Robin Chhabra },
  journal={arXiv preprint arXiv:2505.00842},
  year={ 2025 }
}
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