In many different fields interactions between objects play a critical role in determining their behavior. Graph neural networks (GNNs) have emerged as a powerful tool for modeling interactions, although often at the cost of adding considerable complexity and latency. In this paper, we consider the problem of spatial interaction modeling in the context of predicting the motion of actors around autonomous vehicles, and investigate alternative approaches to GNNs. We revisit convolutions and show that they can demonstrate comparable performance to graph networks in modeling spatial interactions with lower latency, thus providing an effective and efficient alternative in time-critical systems. Moreover, we propose a novel interaction loss to further improve the interaction modeling of the considered methods.
翻译:在许多不同领域,物体之间的相互作用在确定其行为方面起着关键作用。图表神经网络(GNNs)已成为建模互动的有力工具,尽管往往以增加相当的复杂性和潜伏性为代价。在本文件中,我们从预测行为者围绕自主车辆的动作的角度来考虑空间互动模型问题,并研究其他办法来取代GNNs。我们重新审视演变情况,并表明这些网络在模拟低潜伏的空间互动方面可以与图形网络相比,在模拟低潜伏的空间互动方面可以表现出可比较的性能,从而在时间紧迫的系统中提供有效和高效的替代方法。此外,我们提出新的互动损失,以进一步改进所考虑方法的互动模型。