Through advancement of the Vehicle-to-Everything (V2X) network, road safety, energy consumption, and traffic efficiency can be significantly improved. An accurate vehicle trajectory prediction benefits communication traffic management and network resource allocation for the real-time application of the V2X network. Recurrent neural networks and their variants have been reported in recent research to predict vehicle mobility. However, the spatial attribute of vehicle movement behavior has been overlooked, resulting in incomplete information utilization. To bridge this gap, we put forward for the first time a hierarchical trajectory prediction structure using the capsule neural network (CapsNet) with three sequential components. First, the geographic information is transformed into a grid map presentation, describing vehicle mobility distribution spatially and temporally. Second, CapsNet serves as the core model to embed local temporal and global spatial correlation through hierarchical capsules. Finally, extensive experiments conducted on actual taxi mobility data collected in Porto city (Portugal) and Singapore show that the proposed method outperforms the state-of-the-art methods.
翻译:精确的车辆轨迹预测有利于通信交通管理和网络资源分配,用于实时应用V2X网络; 经常神经网络及其变体在最近的预测车辆机动性的研究中已经报告; 然而,车辆移动行为的空间属性被忽视,导致信息利用不完全; 为了缩小这一差距,我们首次提出使用囊形神经网络(CapsNet)的等级轨迹预测结构,其中有三个相继组成部分。 首先,地理信息转换为电网图展示,从空间和时间上描述车辆机动性分布。 其次,CapsNet作为通过等级胶囊嵌入当地时空和全球空间相关性的核心模型。最后,对波尔图市(葡萄牙)和新加坡收集的实际出租车机动性数据进行的广泛实验表明,拟议方法超越了最新方法。</s>