具有残差学习功能的运动学感知多图注意力网络用于异构轨迹预测

Zihao Sheng;Zilin Huang;Sikai Chen
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引用次数: 0

摘要

在高度交互的交通环境中,异构交通代理的轨迹预测对于确保自动驾驶的安全性和效率起着至关重要的作用。该领域的大量研究都集中在基于物理的方法上,因为这些方法可以清晰地解释轨迹的动态演变。然而,基于物理的方法往往精度有限。最近,基于学习的方法表现出了更好的性能,但由于没有充分纳入物理约束条件,因此不能完全相信这些方法。为了缓解纯物理方法和学习方法的局限性,本研究提出了一种运动学感知多图注意网络(KA-MGAT),它将物理模型纳入深度学习框架,以改善神经网络的学习过程。此外,我们还提出了一个残差预测模块,以进一步完善轨迹预测,并解决运动学模型中的简化假设所带来的局限性。我们通过在 ApolloScape 和 NGSIM 这两个具有挑战性的轨迹数据集上进行实验来评估我们提出的模型。实验结果表明,在预测精度和学习效率方面,我们的模型优于各种运动学无关模型。
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Kinematics-Aware Multigraph Attention Network with Residual Learning for Heterogeneous Trajectory Prediction
Trajectory prediction for heterogeneous traffic agents plays a crucial role in ensuring the safety and efficiency of automated driving in highly interactive traffic environments. Numerous studies in this area have focused on physics-based approaches because they can clearly interpret the dynamic evolution of trajectories. However, physics-based methods often suffer from limited accuracy. Recent learning-based methods have demonstrated better performance, but they cannot be fully trusted due to the insufficient incorporation of physical constraints. To mitigate the limitations of purely physics-based and learning-based approaches, this study proposes a kinematics-aware multigraph attention network (KA-MGAT) that incorporates physics models into a deep learning framework to improve the learning process of neural networks. Besides, we propose a residual prediction module to further refine the trajectory predictions and address the limitations arising from simplified assumptions in kinematic models. We evaluate our proposed model through experiments on two challenging trajectory datasets, namely, ApolloScape and NGSIM. Our findings from the experiments demonstrate that our model outperforms various kinematics-agnostic models with respect to prediction accuracy and learning efficiency.
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Front Cover Contents Advancements and Prospects in Multisensor Fusion for Autonomous Driving Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation Decision Making and Control of Autonomous Vehicles Under the Condition of Front Vehicle Sideslip
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