Driving Style Classification Using a Semisupervised Support Vector Machine

Wenshuo Wang, Junqiang Xi*, Alexandre Chong, Lin Li

*Corresponding author for this work

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Abstract

Supervised learning approaches are widely used for driving style classification; however, they often require a large amount of labeled training data, which is usually scarce in a real-world setting. Moreover, it is time-consuming to manually label huge amounts of driving data due to uncertainties of driver behavior and variances among the data analysts. To address this problem, a semisupervised approach, a semisupervised support vector machine (S3VM), is employed to classify drivers into aggressive and normal styles based on a few labeled data points. First, a few data clusters are selected and manually labeled using a k-means clustering method. Then, a specific differentiable surrogate of a loss function is developed, which makes it feasible to use standard optimization tools to solve the nonconvex optimization problem. One of the most popular quasi-Newton algorithms is then used to assign the optimal label to all of the training data. Finally, we compare the S3VM method with a support vector machine method for classifying driving styles from different amounts of labeled data. Experiments show that the S3VM method can improve the classification accuracy by about 10% and reduce the labeling effort by using only a few labeled data clusters among huge amounts of unlabeled data.

Original languageEnglish
Article number8015191
Pages (from-to)650-660
Number of pages11
JournalIEEE Transactions on Human-Machine Systems
Volume47
Issue number5
DOIs
Publication statusPublished - Oct 2017

Keywords

  • Driving style classification
  • longitudinal driving behavior
  • nonconvex optimization
  • quasi-Newton (QN) methods
  • semisupervised support vector machine (S3VM)

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Wang, W., Xi, J., Chong, A., & Li, L. (2017). Driving Style Classification Using a Semisupervised Support Vector Machine. IEEE Transactions on Human-Machine Systems, 47(5), 650-660. Article 8015191. https://doi.org/10.1109/THMS.2017.2736948