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A driver abnormality recondition model based on dynamic Bayesian network for ubiquitous computing

机译:一种基于动态贝叶斯网络的驾驶员异常修复模型

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Due to the difficulties in context management for ubiquitous computing, we propose a model based on dynamic Bayesian network, integrating multi-physiological characteristics of the original context, such as blood alcohol concentration, eye movement and head movement. From one time slice to another time slice, the model applies the simple graphical model language to identify the physical condition of the driver sufficiently in the smart vehicle space, which gives the accurate recommendations under the abnormal state(drunk, fatigue) timely and ensures safe driving behavior. The case study by simulating the environment confirms the effectiveness of the model in a real-time driving environment. In addition, the model can reason according to several context information accurately, and choose the highest priority of body state.
机译:由于普适计算的上下文管理存在困难,我们提出了一个基于动态贝叶斯网络的模型,该模型集成了原始上下文的多种生理特征,例如血液中的酒精浓度,眼睛运动和头部运动。该模型从一个时间片到另一个时间片,使用简单的图形模型语言来充分识别智能车空间中驾驶员的身体状况,从而在异常状态(醉酒,疲劳)下及时给出准确的建议,并确保安全驾驶行为。通过模拟环境的案例研究证实了该模型在实时驾驶环境中的有效性。另外,该模型可以根据多个上下文信息准确地进行推理,并选择身体状态的最高优先级。

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