混合机器学习方法在复杂交通场景下的安全轨迹规划

Amit Chaulwar, M. Botsch, W. Utschick
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引用次数: 11

摘要

通过干预车辆的横向和纵向动力学来规划安全轨迹对于提高道路交通安全具有巨大的潜力。这类算法的发展面临的主要挑战是考虑车辆非完整约束和实现效率,使算法在车辆中实时运行。最近推出的Augmented CL-RRT算法是一种利用分析模型进行轨迹规划的方法,该方法基于对许多纵向加速度剖面的蛮力评估来找到无碰撞轨迹。该算法考虑了具有多个静态和动态目标的复杂道路交通场景中车辆的非完整约束,但需要大量的计算时间。这项工作提出了一种混合机器学习方法,用于预测关键交通场景中合适的加速度曲线,从而在减少计算时间的同时,仅使用少量加速度曲线与增强CL-RRT一起找到安全轨迹。这是使用卷积神经网络变体3D-ConvNet实现的,该网络从其他道路交通参与者的预测生成的预测占用网格序列中学习时空特征。这些学习到的特征与EGO车辆的手动设计特征一起用于预测加速度曲线。通过仿真比较了蛮力方法与所提方法在效率和安全性方面的差异。结果显示,在不损害安全的情况下,在效率方面有了巨大的提高。此外,还引入了对Augmented CL-RRT算法的扩展,用于在碰撞已经不可避免的情况下寻找伤害程度较低的轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Machine Learning Approach for Planning Safe Trajectories in Complex Traffic-Scenarios
Planning of safe trajectories with interventions in both lateral and longitudinal dynamics of vehicles has huge potential for increasing the road traffic safety. Main challenges for the development of such algorithms are the consideration of vehicle nonholonomic constraints and the efficiency in terms of implementation, so that algorithms run in real time in a vehicle. The recently introduced Augmented CL-RRT algorithm is an approach that uses analytical models for trajectory planning based on the brute force evaluation of many longitudinal acceleration profiles to find collision-free trajectories. The algorithm considers nonholonomic constraints of the vehicle in complex road traffic scenarios with multiple static and dynamic objects, but it requires a lot of computation time. This work proposes a hybrid machine learning approach for predicting suitable acceleration profiles in critical traffic scenarios, so that only few acceleration profiles are used with the Augmented CL-RRT to find a safe trajectory while reducing the computation time. This is realized using a convolutional neural network variant, introduced as 3D-ConvNet, which learns spatiotemporal features from a sequence of predicted occupancy grids generated from predictions of other road traffic participants. These learned features together with hand-designed features of the EGO vehicle are used to predict acceleration profiles. Simulations are performed to compare the brute force approach with the proposed approach in terms of efficiency and safety. The results show vast improvement in terms of efficiency without harming safety. Additionally, an extension to the Augmented CL-RRT algorithm is introduced for finding a trajectory with low severity of injury, if a collision is already unavoidable.
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