Representing relevant information of a traffic scene and understanding its environment is crucial for the success of autonomous driving. Modeling the surrounding of an autonomous car using semantic relations, i.e., how different traffic participants relate in the context of traffic rule based behaviors, is hardly been considered in previous work. This stems from the fact that these relations are hard to extract from real-world traffic scenes. In this work, we model traffic scenes in a form of spatial semantic scene graphs for various different predictions about the traffic participants, e.g., acceleration and deceleration. Our learning and inference approach uses Graph Neural Networks (GNNs) and shows that incorporating explicit information about the spatial semantic relations between traffic participants improves the predicdtion results. Specifically, the acceleration prediction of traffic participants is improved by up to 12% compared to the baselines, which do not exploit this explicit information. Furthermore, by including additional information about previous scenes, we achieve 73% improvements.
翻译:代表交通现场的相关信息并理解其环境对于自主驾驶的成功至关重要。 利用语义关系,即交通参与者在交通规则行为背景下的不同关联性,模拟自主汽车周围的情况,在先前的工作中几乎没有被考虑过。 这是因为这些关系很难从真实世界交通场景中提取出来。 在这项工作中,我们以空间语义场景形式模拟交通场景,用于对交通参与者的不同预测,例如加速和减速。 我们的学习和推断方法使用了图形神经网络(GNNs),并表明纳入交通参与者之间空间语义关系的明确信息可以改善预言的结果。 具体地说,与基线相比,交通参与者的加速预测提高了高达12%,而基线没有利用这一明确信息。 此外,我们增加了关于以往场景的额外信息,我们实现了73%的改进。