Transferable Driver Behavior Learning Via Distribution Adaption in the Lane Change Scenario

Zirui Li1, Cheng Gong2, Chao Lu2, Jianwei Gong2, Junyan Lu3, Youzhi Xu3, Fengqing Hu1

  • 1Beijing Institute of Technology
  • 2Beijing Institute Of Technology
  • 3SAIC Motor

Details

16:15 - 16:30 | Sun 9 Jun | Room V334 | SuFT8.8

Session: SIPD: Prediction and Decision Making for Socially Interactive Autonomous Driving

Abstract

Because of the high accuracy and low cost, learning-based methods have been widely used to model driver behaviors in various scenarios. However, the performance of learning-based methods depend heavily on the quantity and coverage of the driving data.  When the new driver with insufficient data is considered, the accuracy of these methods cannot be guaranteed any more. To solve this problem, the balanced distribution adaptation (BDA) is used to build the new driver’s decision making model in the lane change (LC) scenario. Meanwhile, a transfer learning (TL) based regression model, modified BDA (MBDA) is proposed to predict the driver’s steering behavior during the LC maneuver. Cross validation (CV) based model selection (MS) method is developed to obtain the optimal parameters in model training process. A series of experiments are carried out based on the simulated and naturalistic driving data to verify the TL based classification and regression models. The experimental results indicate that the BDA and MBDA have an outstanding ability in knowledge transfer. Compared with support vector machine (SVM) and Gaussian mixture regression (GMR), the proposed methods show a better performance in the decision making of lane keep/change and the prediction of the driver’s steering operation.