GNN-RM: A trajectory completion algorithm based on graph neural networks and regeneration modules

Jiyuan Zhang , Zhenjiang Zhang , Lin Hui
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引用次数: 0

Abstract

Data about vehicle trajectories assumes a crucial role in applications such as intelligent connected vehicles. However, missing values resulting from sensors and other factors frequently affect real trajectory data. Currently, it is challenging to utilize trajectory completion methods to generate accurate real-time results at an affordable computing cost. This paper proposes GNN-RM, a trajectory completion algorithm based on graph neural networks and regeneration modules, encompassing feature extraction, subgraph construction, spatial interaction graph, and trajectory regeneration modules. The feature extraction algorithm extracts influential data as feature vectors based on certain conditions and organizes these feature vectors into different subgraphs according to categories. The spatial interaction graph constructed through graph neural networks extracts spatial interaction features between vehicles and the environment, while the regeneration modules constructed by multi-head attention mechanisms extract temporal features of vehicles, thereby completing the missing trajectories. The experimental results demonstrate that GNN-RM can achieve higher trajectory completion accuracy with fewer input parameters than multiple baseline models.

GNN-RM:基于图神经网络和再生模块的轨迹完成算法
车辆轨迹数据在智能互联车辆等应用中发挥着至关重要的作用。然而,传感器和其他因素导致的缺失值经常会影响真实轨迹数据。目前,利用轨迹补全方法以可承受的计算成本生成准确的实时结果具有挑战性。本文提出了基于图神经网络和再生模块的轨迹补全算法 GNN-RM,包括特征提取、子图构建、空间交互图和轨迹再生模块。特征提取算法根据特定条件提取有影响力的数据作为特征向量,并根据类别将这些特征向量组织成不同的子图。通过图神经网络构建的空间交互图提取车辆与环境之间的空间交互特征,而通过多头注意力机制构建的再生模块则提取车辆的时间特征,从而补全缺失的轨迹。实验结果表明,与多个基线模型相比,GNN-RM 能以更少的输入参数实现更高的轨迹补全精度。
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CiteScore
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