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D2D^2D2SLAM: Decentralized and Distributed Collaborative Visual-inertial SLAM System for Aerial Swarm

3 November 2022
Hao Xu
Peize Liu
Xinyi Chen
Shaojie Shen
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Abstract

Collaborative simultaneous localization and mapping (CSLAM) is essential for autonomous aerial swarms, laying the foundation for downstream algorithms such as planning and control. To address existing CSLAM systems' limitations in relative localization accuracy, crucial for close-range UAV collaboration, this paper introduces D2D^2D2SLAM-a novel decentralized and distributed CSLAM system. D2D^2D2SLAM innovatively manages near-field estimation for precise relative state estimation in proximity and far-field estimation for consistent global trajectories. Its adaptable front-end supports both stereo and omnidirectional cameras, catering to various operational needs and overcoming field-of-view challenges in aerial swarms. Experiments demonstrate D2D^2D2SLAM's effectiveness in accurate ego-motion estimation, relative localization, and global consistency. Enhanced by distributed optimization algorithms, D2D^2D2SLAM exhibits remarkable scalability and resilience to network delays, making it well-suited for a wide range of real-world aerial swarm applications. The adaptability and proven performance of D2D^2D2SLAM represent a significant advancement in autonomous aerial swarm technology.

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