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Socially Aware Crowd Navigation with Multimodal Pedestrian Trajectory Prediction for Autonomous Vehicles

机译:社会意识到人群导航与自动车辆的多模式行人轨迹预测

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Seamlessly operating an autonomous vehicles in a crowded pedestrian environment is a very challenging task. This is because human movement and interactions are very hard to predict in such environments. Recent work has demonstrated that reinforcement learning-based methods have the ability to learn to drive in crowds. However, these methods can have very poor performance due to inaccurate predictions of the pedestrians’ future state as human motion prediction has a large variance. To overcome this problem, we propose a new method, SARL-SGAN-KCE, that combines a deep socially aware attentive value network with a human multimodal trajectory prediction model to help identify the optimal driving policy. We also introduce a novel technique to extend the discrete action space with minimal additional computational requirements. The kinematic constraints of the vehicle are also considered to ensure smooth and safe trajectories. We evaluate our method against the state of art methods for crowd navigation and provide an ablation study to show that our method is safer and closer to human behaviour.
机译:在拥挤的行人环境中无缝操作自动车辆是一个非常具有挑战性的任务。这是因为人类运动和相互作用非常难以预测在这种环境中。最近的工作表明,基于加强学习的方法有能力学习在人群中驾驶。然而,由于人类运动预测具有大方差,这些方法由于行人的未来状态的不准确性,这些方法可能具有很差的性能。为了克服这个问题,我们提出了一种新的方法Sarl-Sar-Kce,它将深层社会意识的细心价值网络与人类多模轨迹预测模型相结合,以帮助识别最佳驾驶政策。我们还引入了一种新颖的技术来扩展离散动作空间,具有最小的额外计算要求。还考虑车辆的运动学限制以确保光滑安全的轨迹。我们评估我们对人群导航的最先进方法的方法,并提供了一种消融研究,以表明我们的方法更安全,更接近人类行为。

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