Vehicle trajectory prediction is an essential task for enabling many intelligent transportation systems. While there have been some promising advances in the field, there is a need for new agile algorithms with smaller model sizes and lower computational requirements. This article presents DeepTrack, a novel deep learning algorithm customized for real-time vehicle trajectory prediction in highways. In contrast to previous methods, the vehicle dynamics are encoded using Agile Temporal Convolutional Networks (ATCNs) to provide more robust time prediction with less computation. ATCN also uses depthwise convolution, which reduces the complexity of models compared to existing approaches in terms of model size and operations. Overall, our experimental results demonstrate that DeepTrack achieves comparable accuracy to state-of-the-art trajectory prediction models but with smaller model sizes and lower computational complexity, making it more suitable for real-world deployment.
翻译:车辆轨迹预测是促成许多智能运输系统的一项基本任务。虽然在实地取得了一些大有希望的进展,但需要新的灵活算法,其模型规模较小,计算要求较低。文章介绍了深轨,这是为高速公路上实时车辆轨迹预测而定制的一种新的深层次学习算法。与以往的方法不同,车辆动态是使用Agile Temal Convolution Networks(ATCNs)编码的,以提供更稳健的时间预测,而较少进行计算。ATCN还使用深度连动,与模型规模和操作的现有方法相比,这降低了模型的复杂性。总体而言,我们的实验结果表明,深轨迹实现了与最新轨迹预测模型相似的准确性,但模型规模较小,计算复杂性较低,因此更适合实际部署。