Browse > Article
http://dx.doi.org/10.22680/kasa2022.14.3.065

Attention-LSTM based Lane Change Possibility Decision Algorithm for Urban Autonomous Driving  

Lee, Heeseong (서울대학교 공과대학 기계공학부)
Yi, Kyongsu (서울대학교 공과대학 기계공학부)
Publication Information
Journal of Auto-vehicle Safety Association / v.14, no.3, 2022 , pp. 65-70 More about this Journal
Abstract
Lane change in urban environments is a challenge for both human-driving and automated driving due to their complexity and non-linearity. With the recent development of deep-learning, the use of the RNN network, which uses time series data, has become the mainstream in this field. Many researches using RNN show high accuracy in highway environments, but still do not for urban environments where the surrounding situation is complex and rapidly changing. Therefore, this paper proposes a lane change possibility decision network by adopting Attention layer, which is an SOTA in the field of seq2seq. By weighting each time step within a given time horizon, the context of the road situation is more human-like. A total 7D vectors of x, y distances and longitudinal relative speed of side front and rear vehicles, and longitudinal speed of ego vehicle were used as input. A total 5,614 expert data of 4,098 yield cases and 1,516 non-yield cases were used for training, and the performance of this network was tested through 1,817 data. Our network achieves 99.641% of test accuracy, which is about 4% higher than a network using only LSTM in an urban environment. Furthermore, it shows robust behavior to false-positive or true-negative objects.
Keywords
Lane Change; LSTM; Attention layer; Urban Autonomous Driving; Traffic congestion;
Citations & Related Records
연도 인용수 순위
  • Reference
1 한덕웅, 이경성. 2002, "도로교통사고를 유발한 원인의 설명," 한국심리학회지: 문화 및 사회문제, Vol. 8, No. 1, pp. 41-59.
2 L. Wan, P.Raksincharoensak, M. Nagai, 2007, "Study on automatic driving system for highway lane change maneuver using driving simulator," Journal of Mechanical Systems for Transportation and Logistics, Vol.8, No. 1, pp. 84-94.
3 K. Li, X. Wang, Y. Xu, J. Wang, 2016, "Lane changing intention recognition based on speech recognition models," Transportation Research Part C: Emerging Technologies, Vol. 69, pp. 497-514.   DOI
4 L. Li, W. Zhao, C. Xu, C. Wang, Q. Chen, S. Dai, 2019, "Lane-Change Intention Inference Based on RNN for Autonomous Driving on Highways," IEEE Transactions on Vehicular Technology, Vol. 70, No. 6, pp. 5499-5510.
5 J. Kim, H. Lee and K. Yi, 2021, "Online Static Probability Map and Odometry Estimation using Automotive LiDAR for Urban Autonomous Driving," 2021 IEEE International Intelligent Transportation Systems Conference (ITSC), pp. 2674-2681.
6 Y. Liu, X. Wang, L. Li, S. Cheng, Z. Chen, 2019, "A Novel Lane Change Decision-Making Model of Autonomous Vehicle Based on Support Vector Machine," IEEE Access, Vol. 7, pp. 26543-26550.   DOI
7 D. Seo, H. Chae, K. Yi, 2021, "Human Driving Data based Yield Intention Inference Algorithm for Lane Change of Autonomous Vehicles in Congested Urban Traffic," Future Active Safety Technology toward Zero Accidents (FAST-zero'21), pp. 1-5.