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Driver distraction detection for vehicular monitoring

机译:驾驶员分心检测,用于车辆监控

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This paper describes a driver distraction detection scenario which is important to enhance driving safety. We employ data obtained by a GPS to reproduce the driver behavior. Gaussian Mixture model (GMM) is used to capture the sequence of driving characteristics according to the reconstructed vehicle's information and it is also used as a classifier to assign the driving behavior to normal or distraction category. In our work, we consider using a low cost 1Hz GPS receiver as the vehicle data acquisition equipment instead of the costly sensors (steering angle sensor, throttle/brake position sensor, etc). The nonlinear extended 2-wheel vehicle dynamic model is adopted in this study. Firstly, two states, i.e. the sideslip angle and the yaw rate are calculated since they are not available from GPS measurements. Secondly, a piecewise optimization scheme is proposed to reconstruct the driving behaviors which include the steering angle and the longitude force. Finally, a GMM classifier is applied to identify whether the driver is under distraction.
机译:本文介绍了驾驶员分心检测方案,这对于提高驾驶安全性很重要。我们使用GPS获取的数据来重现驾驶员的行为。高斯混合模型(GMM)用于根据重建的车辆信息来捕获驾驶特性序列,并且还可以用作将驾驶行为分配给正常或分散注意力类别的分类器。在我们的工作中,我们考虑使用低成本的1Hz GPS接收器作为车辆数据采集设备,而不是使用昂贵的传感器(转向角传感器,油门/制动位置传感器等)。本研究采用非线性扩展的两轮车辆动力学模型。首先,计算两个状态,即侧滑角和偏航率,因为它们无法从GPS测量中获得。其次,提出了一种分段优化方案,以重构包括转向角和经度力在内的驾驶行为。最后,应用GMM分类器来识别驾驶员是否处于分心状态。

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