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Smartwatch-Based Open-Set Driver Identification by Using GMM-Based Behavior Modeling Approach

机译:基于SmartWatch的开放式驱动程序识别通过使用基于GMM的行为建模方法

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摘要

Driver identification must be studied because of the development of telematics and Internet of Things applications. Many application services require an accurate account of a driver’s identity; for example, usage-based insurance may require a remote collection of data regarding driving. Recently, a Gaussian mixture model (GMM)-based behavioral modeling approach has been successfully developed for smartwatch-based driver authentication. This study extends the GMM-based behavioral modeling approach from driver authentication to open-set driver identification. Because the proposed approach can help for identifying illegal users, it is highly suitable for real-world conditions. According to a review of the relevant literature, this study proposed the first smartwatch-based driver identification system. This study proposed three open-set driver identification methods for different application domains. The result of this research provides a reference for designing driver identification systems. To demonstrate the feasibility of the proposed method, an experimental system that evaluates the performance of the driver identification method in simulated and real environments was proposed. The experimental results for the three proposed methods of driver identification illustrated an equal error rate (EER) of 11.19%, 10.65%, and 10.50% under a simulated environment and an EER of 17.95%, 17.07%, and 16.66% under a real environment.
机译:由于远程信息处理和应用互联网的发展,必须研究司机识别。许多应用服务需要准确的驾驶员身份说明;例如,基于使用的保险可能需要关于驾驶的遥控数据。最近,已成功开发了基于SmartWatch的驱动程序认证的高斯混合模型(GMM)的基于行为建模方法。本研究将基于GMM的行为建模方法从驾驶员身份验证扩展到开放式驱动器识别。因为所提出的方法可以帮助识别非法用户,这是非常适合现实世界的条件。根据相关文献综述,本研究提出了基于SmartWatch的驱动程序识别系统。本研究提出了针对不同应用域的三种开放式驱动器识别方法。该研究的结果为设计驱动器识别系统提供了参考。为了证明所提出的方法的可行性,提出了一种评估模拟和真实环境中的驱动器识别方法性能的实验系统。三种提出的探测方法的实验结果显示了在模拟环境下11.19%,10.65%和10.50%的相同错误率(eer),eer为17.95%,17.07%,17.07%,16.66%,在真实环境下。

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