IEEE Access (Jan 2020)

Driver Lane Change Intention Recognition of Intelligent Vehicle Based on Long Short-Term Memory Network

  • Liang Tang,
  • Hengyang Wang,
  • Wenhao Zhang,
  • Zhongyi Mei,
  • Liang Li

DOI
https://doi.org/10.1109/ACCESS.2020.3011550
Journal volume & issue
Vol. 8
pp. 136898 – 136905

Abstract

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Driving intention prediction is one of the key technologies for the development of advanced assisted driving systems (ADAS), which could greatly reduce traffic accidents caused by lane change and ensure driving safety. In this paper, an advanced predictive method based on Multi-LSTM (Long Short-Term Memory) is proposed to predict lane change intention effectively. First, the training data set and test set based on real road information data set NGSIM (Next Generation SIMulation) are built considering ego vehicle driving state and the influence of surrounding vehicles. Second, the Multi-LSTM-based prediction controller is constructed to learn vehicle behavior characteristics and time series relation of various states in the process of lane change. Then, the influences of prediction model structure change and data structure change on test results are verified. Finally, the verification tests based on HIL (Hardware-in-the-Loop) simulation are constructed. The results show that the proposed prediction model can accurately predict the vehicle lane change intention in highway scenarios and the maximum prediction accuracy can reach 83.75%, which is higher than that of common method SVM (Support Vector Machine).

Keywords