论文标题

连续的交互式行为学习与流量差异测量:动态梯度场景记忆方法

Continual Interactive Behavior Learning With Traffic Divergence Measurement: A Dynamic Gradient Scenario Memory Approach

论文作者

Lin, Yunlong, Li, Zirui, Gong, Cheng, Lu, Chao, Wang, Xinwei, Gong, Jianwei

论文摘要

开发自动驾驶汽车(AV)有助于提高智能运输系统(ITS)的道路安全和交通效率。准确地预测交通参与者的轨迹对于在交互式场景中的AVS的决策和运动计划至关重要。最近,基于学习的轨迹预测因素显示了高速公路或城市地区的最先进表现。但是,大多数接受固定数据集训练的基于学习的模型在不断变化的情况下的性能可能很差。具体来说,在学习新的情况后,它们可能在学习的方案中表现不佳。这种现象被称为“灾难性遗忘”。很少有研究调查在连续场景中的轨迹预测,在这种情况下可能会发生灾难性遗忘。为了解决这个问题,首先,在本文中提出了一种新颖的持续学习方法(CL)用于车辆轨迹预测。然后,受到脑科学的启发,通过利用场景之间的交通差异的测量来开发动态记忆机制,该方案之间的交通差异可以平衡所提出的CL方法的性能和训练效率。最后,从不同位置收集的数据集用于设计实验中的持续训练和测试方法。实验结果表明,所提出的方法在不重新训练的情况下连续场景中达到了一致的高预测准确性,这与非CL方法相比会减轻灾难性遗忘。拟议方法的实施可在https://github.com/bit-jack/d-gsm上公开获得

Developing autonomous vehicles (AVs) helps improve the road safety and traffic efficiency of intelligent transportation systems (ITS). Accurately predicting the trajectories of traffic participants is essential to the decision-making and motion planning of AVs in interactive scenarios. Recently, learning-based trajectory predictors have shown state-of-the-art performance in highway or urban areas. However, most existing learning-based models trained with fixed datasets may perform poorly in continuously changing scenarios. Specifically, they may not perform well in learned scenarios after learning the new one. This phenomenon is called "catastrophic forgetting". Few studies investigate trajectory predictions in continuous scenarios, where catastrophic forgetting may happen. To handle this problem, first, a novel continual learning (CL) approach for vehicle trajectory prediction is proposed in this paper. Then, inspired by brain science, a dynamic memory mechanism is developed by utilizing the measurement of traffic divergence between scenarios, which balances the performance and training efficiency of the proposed CL approach. Finally, datasets collected from different locations are used to design continual training and testing methods in experiments. Experimental results show that the proposed approach achieves consistently high prediction accuracy in continuous scenarios without re-training, which mitigates catastrophic forgetting compared to non-CL approaches. The implementation of the proposed approach is publicly available at https://github.com/BIT-Jack/D-GSM

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