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http://dx.doi.org/10.22680/kasa2022.14.2.039

LiDAR Static Obstacle Map based Position Correction Algorithm for Urban Autonomous Driving  

Noh, Hanseok (서울대학교 기계공학부)
Lee, Hyunsung (서울대학교 기계공학부)
Yi, Kyongsu (서울대학교 기계공학부)
Publication Information
Journal of Auto-vehicle Safety Association / v.14, no.2, 2022 , pp. 39-44 More about this Journal
Abstract
This paper presents LiDAR static obstacle map based vehicle position correction algorithm for urban autonomous driving. Real Time Kinematic (RTK) GPS is commonly used in highway automated vehicle systems. For urban automated vehicle systems, RTK GPS have some trouble in shaded area. Therefore, this paper represents a method to estimate the position of the host vehicle using AVM camera, front camera, LiDAR and low-cost GPS based on Extended Kalman Filter (EKF). Static obstacle map (STOM) is constructed only with static object based on Bayesian rule. To run the algorithm, HD map and Static obstacle reference map (STORM) must be prepared in advance. STORM is constructed by accumulating and voxelizing the static obstacle map (STOM). The algorithm consists of three main process. The first process is to acquire sensor data from low-cost GPS, AVM camera, front camera, and LiDAR. Second, low-cost GPS data is used to define initial point. Third, AVM camera, front camera, LiDAR point cloud matching to HD map and STORM is conducted using Normal Distribution Transformation (NDT) method. Third, position of the host vehicle position is corrected based on the Extended Kalman Filter (EKF).The proposed algorithm is implemented in the Linux Robot Operating System (ROS) environment and showed better performance than only lane-detection algorithm. It is expected to be more robust and accurate than raw lidar point cloud matching algorithm in autonomous driving.
Keywords
Urban Autonomous Driving; Position Correction; ROS; LiDAR point cloud; Normal Distribution Transformation; Static Obstacle; Occupancy Grid Map;
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1 김민규, 박준규, 2013, "위성 수신환경 변화에 따른 인터넷 RTK GPS 측량의 정확도 평가", 한국측량학회지, 31(4), pp. 277~283.   DOI
2 Dominguez, Raul, et al., 2011, LIDAR based perception solution for autonomous vehicles., 2011 11th International Conference on Intelligent Systems Design and Applications, IEEE, pp. 790~795.
3 김종호, 이호준, 이경수, 2020, "도심자율주행을 위한 라이다 정지 장애물 기반 차량 동적 상태 추정알고리즘", 한국자동차안전학회 추계 학술대회, Vol. 9, No.3, pp.24-30.
4 Ko, Y., Jun, J., Ko, D., Jeon, M., 2021, "Key points estimation and point instance segmentation approach for lane detection", IEEE Transactions on Image Processing, Vol. 30, pp. 2977~2988.   DOI
5 Dongwok, K., Beomjun, K., Taeyoung, C., Kyongsu, Yi., 2017, "Lane-Level Localization Using an AVM Camera for an Automated Driving Vehicle in Urban Environments", IEEE/ASME Transactions on Mechatronics, Vol. 22, No. 1, pp. 280~290.   DOI