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Recognition of Surrounding Vehicles Driving Behavior Based on Gaussian Mixture Model-Hidden Markov Model for Autonomous Vehicle
Technical Paper
2021-01-7020
ISSN: 0148-7191, e-ISSN: 2688-3627
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English
Abstract
Vehicle driving behavior recognition is critical to improve the safety and rationality of autonomous vehicle decision-making and planning in heterogeneous vehicle mixed scenarios. Aiming at the problems that traditional driving behavior recognition methods only consider a single driving behavior, which has insufficient recognition accuracy, and the lack of consideration of the impact on the neighborhood between traffic subjects, the algorithm robustness is poor. A driving behavior recognition method based on Gaussian mixture hidden Markov model (GMM-HMM) is proposed. Firstly, preprocess the NGSIM data sample, take the surrounding vehicles lateral displacement, lateral speed are taken as the HMM observation sequence, the HMM driving behavior recognition model is established. Then, the Baum-Welch algorithm and the Viterbi algorithm are used to train the parameters of the HMM to obtain Hidden state sequence of driving behavior. Finally, the proposed driving behavior recognition model of surrounding vehicles is validated by using real vehicle date and NGSIM vehicle natural trajectory data. The results show that the driving behavior recognition method based on GMM-HMM can effectively recognize typical driving behaviors such as vehicles going straight and changing lanes. The average correct recognition rate reaches 94%, and the average prediction delay is 176ms, compared with the random forest algorithm under the same scene and training data, the model is better. This method can effectively identify the driving behavior of the vehicle, and can provide a theoretical basis for the decision-making and planning of the autonomous vehicle in the heterogeneous vehicle mixed scenario.
Authors
Citation
ZHAO, S., Wang, Y., Wang, J., and Li, Y., "Recognition of Surrounding Vehicles Driving Behavior Based on Gaussian Mixture Model-Hidden Markov Model for Autonomous Vehicle," SAE Technical Paper 2021-01-7020, 2021, https://doi.org/10.4271/2021-01-7020.Also In
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