The field of motion prediction for automated driving has seen tremendous progress recently, bearing ever-more mighty neural network architectures. Leveraging these powerful models bears great potential for the closely related planning task. In this letter we propose a novel goal-conditioning method and show its potential to transform a state-of-the-art prediction model into a goal-directed planner. Our key insight is that conditioning prediction on a navigation goal at the behaviour level outperforms other widely adopted methods, with the additional benefit of increased model interpretability. We train our model on a large open-source dataset and show promising performance in a comprehensive benchmark.
翻译:最近,自动驾驶运动预测领域取得了巨大进展,产生了越来越强大的神经网络结构。利用这些强大的模型为密切相关的规划任务提供了巨大潜力。我们在信中提议了一种新的目标调节方法,并展示了将最新预测模型转化为目标导向规划师的潜力。我们的主要见解是,在行为水平上对导航目标进行调整的预测优于其他广泛采用的方法,而提高模型可解释性将带来更多好处。我们用一个大型开放源码数据集来培训我们的模型,并在一个综合基准中显示有希望的业绩。