The Autonomous Modular Bus(AMB)introduces an innovative approach to public transportation by allowing modular buses to dock and undock seamlessly while in motion.This capability effectively alleviates traffic congesti...The Autonomous Modular Bus(AMB)introduces an innovative approach to public transportation by allowing modular buses to dock and undock seamlessly while in motion.This capability effectively alleviates traffic congestion and decreases energy usage through smoother and more efficient vehicle operation.However,achieving autonomous docking for AMBs poses significant challenges,including the need for precise localization in both horizontal and vertical dimensions and the ability to manage dynamic persistent obstacles in close-range scenarios.Existing Light Detection and Ranging(LiDAR)-based Simultaneous Localization and Mapping(SLAM)algorithms,such as LIO-SAM,perform well in static environments but encounter limitations in dynamic scenarios,particularly with occlusions and vertical drift during AMB docking.In this paper,we propose an enhanced LiDAR-Inertial Measurement Unit(IMU)SLAM framework focused on improving localization accuracy and robustness during AMB docking.Key contributions include:(1)A two-stage scan-to-map matching method with ground constraints to reduce z-axis drift;(2)A factor graph optimization strategy integrating IMU roll and pitch constraints and periodic resetting to mitigate long-term drift;(3)A deep learning-based front vehicle detection and point cloud filtering mechanism to reduce occlusion effects.Experimental evaluations on single-vehicle and dual-vehicle datasets demonstrate that our method significantly reduces Absolute Pose Error(APE)and Relative Pose Error(RPE)compared to existing methods.These results highlight the framework's ability to address the unique challenges of AMB docking,therefore helping alleviate traffic congestion and reduce energy consumption.展开更多
基金supported by the National Natural Science Foundation of China[grant number 52220105001,52221005]the State Key Laboratory of Intelligent Green Vehicle and Mobility[grant number KFY2421]+1 种基金the Independent Research Project of the State Key Laboratory of Intelligent Green Vehicle and Mobility,Tsinghua University[grant number ZZ-GG-20250403]the Tsinghua University(State Key Laboratory of Intelligent Green Vehicle and Mobility)-Hangzhou Airport Economic Demonstration Zone Joint Research Center for Integrated Transportation.
文摘The Autonomous Modular Bus(AMB)introduces an innovative approach to public transportation by allowing modular buses to dock and undock seamlessly while in motion.This capability effectively alleviates traffic congestion and decreases energy usage through smoother and more efficient vehicle operation.However,achieving autonomous docking for AMBs poses significant challenges,including the need for precise localization in both horizontal and vertical dimensions and the ability to manage dynamic persistent obstacles in close-range scenarios.Existing Light Detection and Ranging(LiDAR)-based Simultaneous Localization and Mapping(SLAM)algorithms,such as LIO-SAM,perform well in static environments but encounter limitations in dynamic scenarios,particularly with occlusions and vertical drift during AMB docking.In this paper,we propose an enhanced LiDAR-Inertial Measurement Unit(IMU)SLAM framework focused on improving localization accuracy and robustness during AMB docking.Key contributions include:(1)A two-stage scan-to-map matching method with ground constraints to reduce z-axis drift;(2)A factor graph optimization strategy integrating IMU roll and pitch constraints and periodic resetting to mitigate long-term drift;(3)A deep learning-based front vehicle detection and point cloud filtering mechanism to reduce occlusion effects.Experimental evaluations on single-vehicle and dual-vehicle datasets demonstrate that our method significantly reduces Absolute Pose Error(APE)and Relative Pose Error(RPE)compared to existing methods.These results highlight the framework's ability to address the unique challenges of AMB docking,therefore helping alleviate traffic congestion and reduce energy consumption.