Driving Style Recognition at First Impression for Online Trajectory Prediction

IFAC PAPERSONLINE(2023)

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摘要
This paper proposes a new driving style recognition approach that allows autonomous vehicles (AVs) to perform trajectory predictions for surrounding vehicles with minimal data. Toward that end, we use a hybrid of offline and online methods in the proposed approach. We first learn typical driving styles with PCA and K-means algorithms in the offline part. After that, local Maximum-Likelihood techniques are used to perform online driving style recognition. We benchmarked our method on a real driving dataset against other methods in terms of the RMSE value of the predicted trajectory and the observed trajectory over a 5s duration. The proposed approach can reduce trajectory prediction error by up to 37.7% compared to using the parameters from other literature and up to 24.4% compared to not performing driving style recognition. Copyright (c) 2023 The Authors.
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关键词
Modeling and simulation of transportation systems,Trajectory prediction,Driving style,Car-following,Maximum Likelihood
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