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Probabilistic long-term prediction for autonomous vehicles

机译:自动驾驶汽车的概率长期预测

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Long-term prediction of traffic participants is crucial to enable autonomous driving on public roads. The quality of the prediction directly affects the frequency of trajectory planning. With a poor estimation of the future development, more computational effort has to be put in re-planning, and a safe vehicle state at the end of the planning horizon is not guaranteed. A holistic probabilistic prediction, considering inputs, results and parameters as random variables, highly reduces the problem. A time frame of several seconds requires a probabilistic description of the scene evolution, where uncertainty or accuracy is represented by the trajectory distribution. Following this strategy, a novel evaluation method is needed, coping with the fact, that the future evolution of a scene is also uncertain. We present a method to evaluate the probabilistic prediction of real traffic scenes with varying start conditions. The proposed prediction is based on a particle filter, estimating behavior describing parameters of a microscopic traffic model. Experiments on real traffic data with random leading vehicles show the applicability in terms of convergence, enabling long-term prediction using forward propagation.
机译:对交通参与者的长期预测对于在公共道路上实现自动驾驶至关重要。预测的质量直接影响轨迹规划的频率。由于对未来发展的估算很差,因此必须在重新规划中投入更多的计算工作,并且不能保证规划期末的安全车辆状态。将输入,结果和参数视为随机变量的整体概率预测可以极大地减少问题。几秒钟的时间范围要求对场景演化进行概率描述,其中不确定性或准确性由轨迹分布表示。遵循这种策略,需要一种新颖的评估方法,以应对这样一个事实,即场景的未来发展也不确定。我们提出一种方法来评估具有不同开始条件的真实交通场景的概率预测。提出的预测基于粒子过滤器,估计描述微观交通模型参数的行为。在具有随机先导车辆的真实交通数据上进行的实验显示出收敛性的适用性,从而可以使用前向传播进行长期预测。

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