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首页> 外文期刊>International Journal of Advanced Robotic Systems >Detection of contributing object to driving operations based on hidden Markov model
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Detection of contributing object to driving operations based on hidden Markov model

机译:基于隐马尔可夫模型的驾驶运算贡献对象的检测

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摘要

With increase in the number of elderly people in the Japanese society, traffic accidents caused by elderly driver is considered problematic. The primary factor of the traffic accidents is a reduction in their driving cognitive performance. Therefore, a system that supports the cognitive performance of drivers can greatly contribute in preventing accidents. Recently, the development of devices for visually providing information, such as smart glasses or head up display, is in progress. These devices can provide more effective supporting information for cognitive performance. In this article, we focus on the selection problem of information to be presented for drivers to realize the cognitive support system. It has been reported that the presentation of excessive information to a driver reduces the judgment ability of the driver and makes the information less trustworthy. Thus, indiscriminate presentation of information in the vision of the driver is not an effective cognitive support. Therefore, a mechanism for determining the information to be presented to the driver based on the current driving situation is required. In this study, the object that contributes to execution of avoidance driving operation is regarded as the object that drivers must recognize and present for drivers. This object is called as contributing object. In this article, we propose a method that selects contributing objects among the appeared objects on the current driving scene. The proposed method expresses the relation between the time series change of an appeared object and avoidance operation of the driver by a mathematical model. This model can predict execution timing of avoidance driving operation and estimate contributing object based on the prediction result of driving operation. This model named as contributing model consisted of multi-hidden Markov models. Hidden Markov model is time series probabilistic model with high readability. This is because that model parameters express the probabilistic distribution and its statistics. Therefore, the characteristics of contributing model are that it enables the designer to understand the basis for the output decision. In this article, we evaluated detection accuracy of contributing object based on the proposed method, and readability of contributing model through several experiments. According to the results of these experiments, high detection accuracy of contributing object was confirmed. Moreover, it was confirmed that the basis of detected contributing object judgment can be understood from contributing model.
机译:随着日本社会的老年人数量的增加,老年人司机造成的交通事故被认为是有问题的。交通事故的主要因素是其推动认知性能的减少。因此,支持司机的认知性能的系统可以大大有助于防止事故。最近,正在进行用于视觉上提供信息的设备,例如智能眼镜或头部显示器。这些设备可以为认知性能提供更有效的支持信息。在本文中,我们专注于为实现认知支持系统提供授权的信息的选择问题。据报道,向驾驶员呈现过多的信息会降低驾驶员的判断能力,并使信息不那么值得信赖。因此,在驾驶员视野中的信息不分青红皂白介绍不是一个有效的认知支持。因此,需要基于当前驾驶情况确定要呈现给驾驶员的信息的机制。在本研究中,有助于执行避免驾驶操作的对象被认为是驱动程序必须识别和呈现驱动程序的对象。此对象称为有贡献对象。在本文中,我们提出了一种选择在当前驾驶场景上的出现对象中的贡献对象的方法。所提出的方法表达了出现的对象的时间序列变化与数学模型的避免操作之间的关系。该模型可以基于驾驶操作的预测结果预测避免驾驶操作的执行定时和估计贡献对象。该型号名称为贡献模型包括多隐马尔可夫模型。隐藏的马尔可夫模型是具有高可读性的时间序列概率模型。这是因为模型参数表达了概率分布及其统计数据。因此,贡献模型的特征是它使设计人员能够了解输出决策的基础。在本文中,我们基于所提出的方法评估贡献对象的检测准确性,以及通过几个实验的贡献模型的可读性。根据这些实验的结果,确认了贡献物体的高检测精度。此外,证实可以从贡献模型中理解检测到的贡献对象判断的基础。

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