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Driving style classification using long-term accelerometer information

机译:使用长期加速度计信息进行驾驶风格分类

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Driving style can be characteristically divided into normal and aggressive. Related researches show that useful information about driving style can be extracted using vehicle's inertial measurement signals with the help of GPS. However, for public transportation the GPS sensor isn't necessary because of repetition of the route. This assumption helps to create low-cost intelligent public transport monitoring system that is capable to classify aggressive and normal driver. In this paper, we propose pattern recognition approach to classify driving style into aggressive or normal automatically without expert evaluation and knowledge using accelerometer data when driving the same route in different driving styles. 3-axis accelerometer signal statistical features were used as classifier inputs. The results show that aggressive and normal driving style classification of 100% precision is achieved using collected data when driving the same route.
机译:驾驶风格可以分为正常驾驶风格和激进驾驶风格。相关研究表明,可以借助GPS借助车辆的惯性测量信号来提取有关驾驶风格的有用信息。但是,对于公共交通来说,由于路线的重复,因此不需要GPS传感器。该假设有助于创建低成本的智能公共交通监控系统,该系统能够对激进驾驶员和正常驾驶员进行分类。在本文中,我们提出了模式识别方法,以便在以不同的驾驶方式驾驶同一条路线时,无需使用专家的专业知识和知识,就可以自动将驾驶方式分为主动或正常两种。 3轴加速度计信号统计功能用作分类器输入。结果表明,在行驶同一条路线时,使用收集的数据可以实现100%准确度的主动和正常驾驶风格分类。

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