Generating realistic vehicle speed trajectories is a crucial component in evaluating vehicle fuel economy and in predictive control of self-driving cars. Traditional generative models rely on Markov chain methods and can produce accurate synthetic trajectories but are subject to the curse of dimensionality. They do not allow to include conditional input variables into the generation process. In this paper, we show how extensions to deep generative models allow accurate and scalable generation. Proposed architectures involve recurrent and feed-forward layers and are trained using adversarial techniques. Our models are shown to perform well on generating vehicle trajectories using a model trained on GPS data from Chicago metropolitan area.
翻译:产生现实的车辆速度轨迹是评价车辆燃料经济和预测自行驾驶汽车控制的一个关键组成部分;传统的基因模型依靠Markov链条方法,可以产生精确的合成轨迹,但受维度诅咒;不允许将有条件的输入变量纳入生成过程;在本文中,我们展示深层基因模型的扩展如何允许准确和可扩缩的生成;拟议结构涉及经常性和进料向前的层,并使用对抗性技术接受培训;我们的模型显示,使用芝加哥市区GPS数据培训的模型,在生成车辆轨迹方面表现良好。