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Comparisons of Machine Learning Algorithms for Driving Behavior Recognition Using In-Vehicle CAN Bus Data

机译:用于使用车载驾驶行为识别的机器学习算法的比较

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Driving behavior recognition is an active research topic as it has many potential applications, such as fleet management, vehicle anti-theft, and planning of car insurance policies. Nowadays, the most successful approaches to driving behavior recognition are based on machine learning algorithms. Each machine learning algorithm has its pros and cons, and no single algorithm fits all problems. Therefore, how to determine an appropriate algorithm suitable for discovering driving patterns is a critical step in driving behavior recognition. This paper aims to conduct an empirical study for driving behavior recognition and evaluate the recognition performance of popular machine-learning algorithms. The experimental results showed that many sensor values gathered from the CAN bus are either highly correlated with one another or less important attributed to driving behavior identification. Among traditional machine learning approaches, ensemble tree-based algorithms, such as Random Forests and Decision Trees have better performance when compared with other approaches.
机译:驾驶行为识别是一个积极的研究主题,因为它具有许多潜在的应用,例如车队管理,车辆防盗和汽车保险政策的规划。如今,驾驶行为识别的最成功的方法是基于机器学习算法。每种机器学习算法都有其优点和缺点,并且没有单一算法适合所有问题。因此,如何确定适合于发现驾驶模式的适当算法是驾驶行为识别的关键步骤。本文旨在对驾驶行为识别进行实证研究,并评估流行的机器学习算法的识别性能。实验结果表明,从CAN总线收集的许多传感器值与彼此的彼此或不那么重要的许多传感器值与驾驶行为识别造成的非常重要。在传统的机器学习方法中,与其他方法相比,诸如随机林和决策树的基于树的基于树的算法,例如随机森林和决策树的性能更好。

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