Trajectory prediction of road users in real-world scenarios is challenging because their movement patterns are stochastic and complex. Previous pedestrian-oriented works have been successful in modelling the complex interactions among pedestrians, but fail in predicting trajectories when other types of road users are involved (e.g., cars, cyclists, etc.), because they ignore user types. Although a few recent works construct densely connected graphs with user label information, they suffer from superfluous spatial interactions and temporal dependencies. To address these issues, we propose Multiclass-SGCN, a sparse graph convolution network based approach for multi-class trajectory prediction that takes into consideration velocity and agent label information and uses a novel interaction mask to adaptively decide the spatial and temporal connections of agents based on their interaction scores. The proposed approach significantly outperformed state-of-the-art approaches on the Stanford Drone Dataset, providing more realistic and plausible trajectory predictions.
翻译:在现实世界的情景中,道路使用者的轨迹预测具有挑战性,因为他们的移动模式是随机的和复杂的。以往的面向行人的工作成功地模拟了行人之间的复杂互动,但在其他类型的道路使用者(例如汽车、骑自行车者等)参与时未能预测轨迹,因为他们忽视了用户类型。虽然最近的一些工程用用户标签信息构建了密连的图形,但他们却遭受了空间上的过度互动和时间依赖。为了解决这些问题,我们建议多级SGCN, 这是一种基于多级轨迹预测的稀薄图形组合网络,它考虑到速度和代理人标签信息,并使用新颖的互动掩体,以适应性地决定代理人根据其互动成绩的时空联系。拟议方法大大超越了斯坦福德龙数据集上的最新方法,提供了更现实和可信的轨迹预测。