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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Determining Utterance Timing of a Driving Agent With Double Articulation Analyzer
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Determining Utterance Timing of a Driving Agent With Double Articulation Analyzer

机译:使用双铰接分析仪确定驱动剂的讲话时机

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摘要

In-vehicle speech-based interaction between a driver and a driving agent should be performed without affecting the driving behavior. A driving agent provides information to the driver and helps his/her driving behavior and non-driving-related tasks, e.g., selecting music and giving weather information. In this paper, we focus on a method for determining utterance timings when a driving agent provides non-driving-related information. If a driving agent provides a driver with non-driving-related information at an inappropriate moment, it will distract his/her driving behavior and deteriorate his/her safety driving. To solve or to mitigate the problem, we propose a novel method for determining the utterance timing of a driving agent on the basis of a double articulation analyzer, which is an unsupervised nonparametric Bayesian machine learning method for detecting contextual change points. To verify the effectiveness of the method, we conduct two experiments. One is an experiment on a short circuit around a park in an urban area, and the other is an experiment on a long course in a town. The results show that the proposed method enables a driving agent to avoid inappropriate timing better than baseline methods.
机译:应当在不影响驾驶行为的情况下执行驾驶员和驾驶代理之间基于车内语音的交互。驾驶代理向驾驶员提供信息,并帮助他/她的驾驶行为和与驾驶无关的任务,例如选择音乐和提供天气信息。在本文中,我们着重于确定一种驱动程序提供非驾驶相关信息时发声时机的方法。如果驾驶代理在不适当的时刻为驾驶员提供了与驾驶无关的信息,它将分散他/她的驾驶行为并恶化他/她的安全驾驶。为了解决或减轻该问题,我们提出了一种基于双重发音分析器确定驱动剂发声时间的新方法,这是一种用于检测上下文变化点的无监督非参数贝叶斯机器学习方法。为了验证该方法的有效性,我们进行了两个实验。一个是对市区公园周围的短路的实验,另一个是对城镇中的长途路线的实验。结果表明,所提出的方法能够使驱动剂比基准方法更好地避免不适当的时间安排。

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