TY - JOUR
T1 - A Learning-Based Personalized Driver Model Using Bounded Generalized Gaussian Mixture Models
AU - Wang, Wenshuo
AU - Xi, Junqiang
AU - Hedrick, J. Karl
N1 - Publisher Copyright:
© 1967-2012 IEEE.
PY - 2019/12
Y1 - 2019/12
N2 - Individual driver's driving behavior plays a pivotal role in personalized driver assistance systems. Gaussian mixture models (GMM) have been widely used to fit driving data, but unsuitable for capturing the data with a long-tailed distribution. Though the generalized GMM (GGMM) could overcome this fitting issue to some extent, it still cannot handle naturalistic data which is generally bounded. This paper presents a learning-based personalized driver model that can handle non-Gaussian and bounded naturalistic driving data. To this end, we develop a BGGMM-HMM framework to model driver behavior by integrating a hidden Markov model (HMM) in a bounded GGMM (BGGMM), which synthetically includes GMM and GGMM as special cases. Further, we design an associated iterative learning algorithm to estimate the model parameters. Naturalistic car-following driving data from eight drivers are used to demonstrate the effectiveness of BGGMM-HMM. Experimental results show that the personalized driver model of BGGMM-HMM that leverages the non-Gaussian and bounded support of driving data can improve model accuracy from 23$ \sim$30% over traditional GMM-based models.
AB - Individual driver's driving behavior plays a pivotal role in personalized driver assistance systems. Gaussian mixture models (GMM) have been widely used to fit driving data, but unsuitable for capturing the data with a long-tailed distribution. Though the generalized GMM (GGMM) could overcome this fitting issue to some extent, it still cannot handle naturalistic data which is generally bounded. This paper presents a learning-based personalized driver model that can handle non-Gaussian and bounded naturalistic driving data. To this end, we develop a BGGMM-HMM framework to model driver behavior by integrating a hidden Markov model (HMM) in a bounded GGMM (BGGMM), which synthetically includes GMM and GGMM as special cases. Further, we design an associated iterative learning algorithm to estimate the model parameters. Naturalistic car-following driving data from eight drivers are used to demonstrate the effectiveness of BGGMM-HMM. Experimental results show that the personalized driver model of BGGMM-HMM that leverages the non-Gaussian and bounded support of driving data can improve model accuracy from 23$ \sim$30% over traditional GMM-based models.
KW - Personalized driver model
KW - car-following behavior
KW - finite mixture model
KW - generalized Gaussian distribution
UR - http://www.scopus.com/inward/record.url?scp=85077199514&partnerID=8YFLogxK
U2 - 10.1109/TVT.2019.2948911
DO - 10.1109/TVT.2019.2948911
M3 - Article
AN - SCOPUS:85077199514
SN - 0018-9545
VL - 68
SP - 11679
EP - 11690
JO - IEEE Transactions on Vehicular Technology
JF - IEEE Transactions on Vehicular Technology
IS - 12
M1 - 8879516
ER -