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Detecting lane departures from steering wheel signal

机译:从方向盘信号检测车道偏离

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Current lane departure warning systems are video-based and lose data when road- and weather conditions are bad. This study sought to develop a lane departure warning algorithm based on the signal drawn from the steering wheel. The rationale is that a car-based lane departure warning system should be robust regardless of road- and weather conditions. N=34 professional driver students drove in a high-fidelity driving simulator at 80 km/h for 55 min every third hour during 36 h of sustained wakefulness. During each driving session We logged the steering wheel- and lane position signals at 60 Hz. To derive the lane position signal, we quantified the transfer function of the simulated vehicle and used it to derive the absolute lane position signal from the steering wheel signal. The Pearson correlation between the derived and actual lane position signals was r=0.48 (based on 12,0001m1). Next we designed an algorithm that alerted, up to three seconds before they occurred, about upcoming lane deviations that exceeded 0.2 m. The sensitivity of the algorithm was 47% and the specificity was 71%. To our knowledge this exceeds the performance of the current video-based systems. (C) 2016 Elsevier Ltd. All rights reserved.
机译:当前的车道偏离警告系统是基于视频的,并且在道路和天气条件恶劣时会丢失数据。这项研究试图开发一种基于方向盘信号的车道偏离警告算法。基本原理是,无论道路和天气情况如何,基于汽车的车道偏离警告系统都应具有强大的功能。 N = 34名职业驾驶员学生在持续清醒36小时的过程中,每三小时以80 km / h的速度在高保真驾驶模拟器中行驶55分钟。在每次驾驶过程中,我们都记录了60 Hz的方向盘和车道位置信号。为了得出车道位置信号,我们对模拟车辆的传递函数进行了量化,并使用它从方向盘信号中得出了绝对车道位置信号。导出的车道位置信号与实际车道位置信号之间的皮尔逊相关系数为r = 0.48(基于12,0001ml)。接下来,我们设计了一种算法,可以在发生这种情况的三秒钟之前提醒即将到来的车道偏离超过0.2 m。该算法的灵敏度为47%,特异性为71%。据我们所知,这超出了当前基于视频的系统的性能。 (C)2016 Elsevier Ltd.保留所有权利。

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