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首页> 外文期刊>IEEE Transactions on Vehicular Technology >A Learning-Based Personalized Driver Model Using Bounded Generalized Gaussian Mixture Models
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A Learning-Based Personalized Driver Model Using Bounded Generalized Gaussian Mixture Models

机译:基于有界广义高斯混合模型的基于学习的个性化驾驶员模型

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摘要

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 similar to 30% over traditional GMM-based models.
机译:单个驾驶员的驾驶行为在个性化驾驶员辅助系统中起着至关重要的作用。高斯混合模型(GMM)已被广泛用于拟合驾驶数据,但不适用于捕获具有长尾分布的数据。尽管广义GMM(GGMM)可以在某种程度上克服这一拟合问题,但它仍然无法处理通常有界的自然数据。本文提出了一种基于学习的个性化驾驶员模型,该模型可以处理非高斯和有界自然驾驶数据。为此,我们开发了一个BGGMM-HMM框架,通过在一个有界的GGMM(BGGMM)中集成一个隐马尔可夫模型(HMM)来对驾驶员行为进行建模,BMMMM综合包括GMM和GGMM作为特例。此外,我们设计了一个相关的迭代学习算法来估计模型参数。来自八个驾驶员的自然驾驶汽车跟随驾驶数据被用来证明BGGMM-HMM的有效性。实验结果表明,与传统的基于GMM的模型相比,BGGMM-HMM的个性化驱动器模型利用了非高斯和有界支持的驾驶数据,可以将模型的准确性从23%提高到30%。

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