SBC-SLAM: Semantic Bio-inspired Collaborative SLAM for Large-Scale Environment Perception of Heterogeneous Systems

Dong Liu, Jingyuan Wu,Yu Du, Runqi Zhang,Ming Cong

IEEE Transactions on Instrumentation and Measurement(2024)

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摘要
Recently, there have been efforts to enable collaborative SLAM of heterogeneous unmanned vehicles(UAV/UGV) in large-scale dynamic environments. However, the challenges of collaborative localization introduced by the view differences between aerial and ground robots, high cost of storing, reusing the metric map, greatly limit the application of traditional visual SLAM algorithms in cross-domain robot collaborative SLAM. To address these issues, this paper introduces a semantic-based bio-inspired SLAM frame work for operating mobile robots equipped with a visual system in unstructured large-scale outdoor environments. This system forms a semi-dense semantic map through bio-inspired tightly coupled visual inertial odometry, which can encode the sensory cues and self-motion cues with biological neural models in a compact and efficient manner. The topological information of semantic feature points serves as visually robust scene descriptor. It enables UAVs and UGVs to recognize the same scene with view variation. The proposed system is tested in both synthetic and real-world large-scale unstructured environments. Proposed system achieving a similar level of accuracy with about 20% of the key frame information required by traditional algorithms. It successfully registered heterogeneous robot’s trajectory in both simulation and real environment, with errors under 10%. Its accuracy shows advantage to previous algorithms.
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关键词
Visual Simultaneous localization and mapping,Large-scale environment measurement,Semantic metric map,Brain inspired SLAM,View robust scene descriptor
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