Moving Objects Tracking Based on Geometric Model-Free Approach With Particle Filter Using Automotive LiDAR
  • Lee, Hojoon
  • Lee, Hyunsung
  • Shin, Donghoon
  • Yi, Kyongsu
Citations

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19
Citations

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25

초록

In this paper, we propose a Geometric Model-Free Approach with a Particle Filter (GMFA-PF) through the use of automotive LiDAR for real-time tracking of moving objects within an urban driving environment. GMFA-PF proved to be lightweight, capable of finishing the process within the sensing period of the LiDAR on a single CPU. The proposed GMFA-PF tracks and estimates moving objects without any assumptions on the geometry of the target. This approach enables efficient tracking of multiple object classes, with robustness to a sparse point cloud. Point cloud on moving objects is classified via the predicted Static Obstacle Map (STOM). A likelihood field is generated through the classified point cloud and is used in particle filtering to estimate the moving object's pose, shape, and speed. Quantitative and qualitative comparisons - with Geometric Model-Based Tracking (MBT), Deep Neural Network (DNN), and GMFA - are performed for GMFA-PF using urban driving and scenario driving data gathered on an autonomous vehicle fitted with close-to-market sensors. The proposed approach shows robust tracking and accurate estimation performance in both sparse and dense point clouds; GMFA-PF achieves improved tracking performance in dense traffic and reduces yaw estimation delay compared to the others. Autonomous vehicles with GMFA-PF demonstrated auto-nomous driving on urban roads. IEEE

키워드

Autonomous vehiclesAutonomous vehiclesLaser radarLiDARmoving object state estimationparticle filterPoint cloud compressionRadar trackingShapesparse point cloud.Target trackingVehicle dynamicsSIMULTANEOUS LOCALIZATIONVEHICLE DETECTIONVISION
제목
Moving Objects Tracking Based on Geometric Model-Free Approach With Particle Filter Using Automotive LiDAR
저자
Lee, HojoonLee, HyunsungShin, DonghoonYi, Kyongsu
DOI
10.1109/TITS.2022.3155828
발행일
2022-10
유형
Article in Press
저널명
IEEE Transactions on Intelligent Transportation Systems
23
10
페이지
17863 ~ 17872