Predicting the possible future trajectories of the surrounding dynamic agents is an essential requirement in autonomous driving. These trajectories mainly depend on the surrounding static environment, as well as the past movements of those dynamic agents. Furthermore, the multimodal nature of agent intentions makes the trajectory prediction problem more challenging. All of the existing models consider the target agent as well as the surrounding agents similarly, without considering the variation of physical properties. In this paper, we present a novel deep-learning based framework for multimodal trajectory prediction in autonomous driving, which considers the physical properties of the target and surrounding vehicles such as the object class and their physical dimensions through a weighted attention module, that improves the accuracy of the predictions. Our model has achieved the highest results in the nuScenes trajectory prediction benchmark, out of the models which use rasterized maps to input environment information. Furthermore, our model is able to run in real-time, achieving a high inference rate of over 300 FPS.
翻译:预测周围动态物剂未来可能的轨迹是自主驾驶的一个基本要求。这些轨迹主要取决于周围静态环境以及这些动态物剂的过去移动情况。此外,物剂意图的多式联运性质使轨迹预测问题更具挑战性。所有现有模型都以类似的方式看待目标物剂以及周围物剂,而不考虑物理特性的变化。在本文件中,我们提出了一个基于深层次的新型自主驾驶多式联运轨迹预测框架,通过加权关注模块考虑目标物类及其周围车辆的物理特性,并通过加权关注模块提高预测的准确性。我们的模型在Nuscenes轨迹预测基准中取得了最高结果,超过了使用光化地图输入环境信息的模型。此外,我们的模型能够实时运行,达到300多发频率。