While autonomous vehicles still struggle to solve challenging situations during on-road driving, humans have long mastered the essence of driving with efficient, transferable, and adaptable driving capability. By mimicking humans' cognition model and semantic understanding during driving, we propose HATN, a hierarchical framework to generate high-quality, transferable, and adaptable predictions for driving behaviors in multi-agent dense-traffic environments. Our hierarchical method consists of a high-level intention identification policy and a low-level trajectory generation policy. We introduce a novel semantic sub-task definition and generic state representation for each sub-task. With these techniques, the hierarchical framework is transferable across different driving scenarios. Besides, our model is able to capture variations of driving behaviors among individuals and scenarios by an online adaptation module. We demonstrate our algorithms in the task of trajectory prediction for real traffic data at intersections and roundabouts from the INTERACTION dataset. Through extensive numerical studies, it is evident that our method significantly outperformed other methods in terms of prediction accuracy, transferability, and adaptability. Pushing the state-of-the-art performance by a considerable margin, we also provide a cognitive view of understanding the driving behavior behind such improvement. We highlight that in the future, more research attention and effort are deserved for transferability and adaptability. It is not only due to the promising performance elevation of prediction and planning algorithms, but more fundamentally, they are crucial for the scalable and general deployment of autonomous vehicles.
翻译:虽然自治车辆仍然在努力解决公路驾驶期间具有挑战性的情况,但人类早已掌握了以高效、可转让和适应性强的驾驶能力驾驶的精髓。通过模仿人的认知模型和驾驶期间的语义理解,我们提出了HATN,这是一个等级框架,用于产生高质量、可转让和可调适的在多剂密集交通环境中的驾驶行为预测。我们的等级方法包括高层次的意向识别政策和低轨道生成政策。我们为每个子任务引入了新的语义亚任务定义和通用国家代表。有了这些技术,等级框架可以跨越不同的驾驶情景。此外,我们的模型能够通过在线适应模块捕捉到个人驱动行为和情景的变异。我们展示了我们在对交错点和环绕圈中的真实交通数据进行轨迹预测的任务中的算法。通过广泛的数字研究,我们的方法显然大大超越了预测准确性、可转移性和适应性的其他方法。用这些技术,从根本上来说,等级框架可以跨越不同的驾驶模式。通过一个在线适应性模块来捕捉到个人驱动行为行为和情景的演化模式。我们通过一个相当大的差距来进行正确的演进性研究,我们提供正确的演进式演进式的演进式的演进性研究。我们所提供的演进式演进。我们也提供了一个值得接受的演进性研究。