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MAVIS: Multi-Camera Augmented Visual-Inertial SLAM using SE<sub>2</sub>(3) Based Exact IMU Pre-integration

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Wang, Yifu
Ng, Yonhon
Sa, Inkyu
Parra, Alvaro
Rodriguez-Opazo, Cristian
Lin, Taojun
Li, Hongdong

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Institute of Electrical and Electronics Engineers Inc.

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We present a novel optimization-based Visual-Inertial SLAM system designed for multiple partially over-lapped camera systems, named MAVIS. Our framework fully exploits the benefits of wide field-of-view from multi-camera systems, and the metric scale measurements provided by an inertial measurement unit (IMU). We introduce an improved IMU pre-integration formulation based on the exponential function of an automorphism of SE2(3), which can effectively enhance tracking performance under fast rotational motion and extended integration time. Furthermore, we extend conventional front-end tracking and back-end optimization module designed for monocular or stereo setup towards multi-camera systems, and introduce implementation details that contribute to the performance of our system in challenging scenarios. The practical validity of our approach is supported by our experiments on public datasets. Our MAVIS won the first place in all the vision-IMU tracks (single and multi-session SLAM) on Hilti SLAM Challenge 2023 with 1.7 times the score compared to the second place.

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2024 IEEE International Conference on Robotics and Automation, ICRA 2024

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