Predicting the future motion of actors in a traffic scene is a crucial part of any autonomous driving system. Recent research in this area has focused on trajectory prediction approaches that optimize standard trajectory error metrics. In this work, we describe three important properties -- physical realism guarantees, system maintainability, and sample efficiency -- which we believe are equally important for developing a self-driving system that can operate safely and practically in the real world. Furthermore, we introduce PTNet (PathTrackingNet), a novel approach for vehicle trajectory prediction that is a hybrid of the classical pure pursuit path tracking algorithm and modern graph-based neural networks. By combining a structured robotics technique with a flexible learning approach, we are able to produce a system that not only achieves the same level of performance as other state-of-the-art methods on traditional trajectory error metrics, but also provides strong guarantees about the physical realism of the predicted trajectories while requiring half the amount of data. We believe focusing on this new class of hybrid approaches is an useful direction for developing and maintaining a safety-critical autonomous driving system.
翻译:预测交通场中行为者的未来运动是任何自主驾驶系统的一个关键部分。最近在这一领域的研究侧重于轨道预测方法,优化标准轨迹误差测量标准。在这项工作中,我们描述了三个重要特性 -- -- 物理现实保障、系统可维护性和抽样效率 -- -- 我们认为这对开发一个能够在现实世界安全实际运作的自我驾驶系统同样重要。此外,我们引入了PTNet(PathTrackingNet),这是车辆轨迹预测的新办法,这是古典纯跟踪路径跟踪算法和现代图形神经网络的混合。通过将结构机器人技术与灵活学习方法相结合,我们能够产生一个不仅在传统轨迹误计量上达到与其他最新方法相同性能的系统,而且还能为预测轨迹的实际真实性提供有力保障,同时需要一半的数据。我们认为,侧重于这一新型混合方法是开发和维护一个安全批评性自主驾驶系统的有益方向。