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Stochastic driver speed control behavior modeling in urban intersections using risk potential-based motion planning framework

机译:基于基于风险潜势的运动规划框架的城市交叉口随机驾驶员速度控制行为建模

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In unsignalized intersections with poor visibility, proactive driving with hazard anticipation is required in order to avoid collisions with other traffic participants from a blind corner. However, for elderly drivers and novice drivers, it is difficult to recognize potential hazardous area and difficult to select an appropriate speed to pass the intersections safely. To assist such drivers, a driver model which can recommend the appropriate speed by learning driving data of expert drivers based on a statistical approach is useful for a driver assistance system. The proposed method automatically estimates parameters of the driver model from the actual driving data by defining risk potential functions for representing braking behaviors while passing through intersections, oncoming vehicles and pedestrians. To evaluate the proposed method, the driving data of instructors of a driving school are collected. The results show that the accuracy (RMSE) of the estimated braking behavior model is 2.5 km/h against the actual data.
机译:在能见度较差的无信号交叉路口,为了避免与盲目的角落的其他交通参与者发生碰撞,需要积极主动地进行危险预测。然而,对于老年驾驶员和新手驾驶员而言,难以识别潜在的危险区域,并且难以选择合适的速度来安全地通过交叉路口。为了辅助这样的驾驶员,可以通过基于统计方法学习专家驾驶员的驾驶数据来推荐合适的速度的驾驶员模型对于驾驶员辅助系统是有用的。所提出的方法通过定义潜在的风险函数来代表行人通过交叉路口,迎面驶来的车辆和行人时的制动行为,从而根据实际驾驶数据自动估算驾驶员模型的参数。为了评估所提出的方法,收集了驾驶学校教师的驾驶数据。结果表明,与实际数据相比,估计的制动行为模型的准确性(RMSE)为2.5 km / h。

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