To plan safe and comfortable trajectories for automated vehicles on highways, accurate predictions of traffic situations are needed. So far, a lot of research effort has been spent on detecting lane change maneuvers rather than on estimating the point in time a lane change actually happens. In practice, however, this temporal information might be even more useful. This paper deals with the development of a system that accurately predicts the time to the next lane change of surrounding vehicles on highways using long short-term memory-based recurrent neural networks. An extensive evaluation based on a large real-world data set shows that our approach is able to make reliable predictions, even in the most challenging situations, with a root mean squared error around 0.7 seconds. Already 3.5 seconds prior to lane changes the predictions become highly accurate, showing a median error of less than 0.25 seconds. In summary, this article forms a fundamental step towards downstreamed highly accurate position predictions.
翻译:为了规划高速公路上自动车辆的安全和舒适的轨迹,需要准确预测交通情况。到目前为止,已经花费了大量的研究努力来探测车道改变操作方法,而不是估计车道改变实际发生的时间点。然而,在实践中,这种时间信息可能甚至更为有用。本文件涉及开发一个系统,精确预测公路上周围车辆在下一道改变的时间,该系统使用长期短期内存的经常性神经网络。基于大型真实世界数据集进行的广泛评估表明,我们的方法能够作出可靠的预测,即使在最具挑战性的情况下,根平方误差大约为0.7秒。在车道改变预测之前的3.5秒时间已经非常准确,显示中误差不到0.25秒。简言之,这篇文章构成了向下游高度准确的定位预测迈出的基本一步。