社交关系和物理车道聚合器:整合社交和物理特征进行多模式运动预测

Qiyuan Chen;Zebing Wei;Xiao Wang;Lingxi Li;Yisheng Lv
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引用次数: 4

摘要

目的——本文旨在为运动预测建模交通代理的交互关系,这对自动驾驶至关重要。很明显,交通代理的轨迹受到物理车道规则和代理的社交互动的影响。设计/方法/方法-在本文中,作者提出了用于多模式运动预测的社会关系和物理车道聚合器,其中主体的社会关系主要通过图卷积网络和自注意机制捕获,然后通过自注意机制与物理车道融合。研究结果-在Waymo开放运动数据集上对所提出的方法进行了评估,结果表明了所提出的两个特征聚合模块用于轨迹预测的有效性。独创性/价值-本文提出了一种新的设计方法来提取交通交互,并在模型的每个部分使用注意力机制来提取和融合不同的关系特征,这与其他方法不同,提高了基于LSTM的轨迹预测方法的准确性。
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Social relation and physical lane aggregator: Integrating social and physical features for multimodal motion prediction
Purpose - The purpose of this paper aims to model interaction relationship of traffic agents for motion prediction, which is critical for autonomous driving. It is obvious that traffic agents' trajectories are influenced by physical lane rules and agents' social interactions. Design/methodology/approach - In this paper, the authors propose the social relation and physical lane aggregator for multimodal motion prediction, where the social relations of agents are mainly captured with graph convolutional networks and self-attention mechanism and then fused with the physical lane via the self-attention mechanism. Findings - The proposed methods are evaluated on the Waymo Open Motion Dataset, and the results show the effectiveness of the proposed two feature aggregation modules for trajectory prediction. Originality/value - This paper proposes a new design method to extract traffic interactions, and the attention mechanism is used in each part of the model to extract and fuse different relational features, which is different from other methods and improves the accuracy of the LSTM-based trajectory prediction method.
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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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