Predicting future trajectories of surrounding obstacles is a crucial task for autonomous driving cars to achieve a high degree of road safety. There are several challenges in trajectory prediction in real-world traffic scenarios, including obeying traffic rules, dealing with social interactions, handling traffic of multi-class movement, and predicting multi-modal trajectories with probability. Inspired by people's natural habit of navigating traffic with attention to their goals and surroundings, this paper presents a unique dynamic graph attention network to solve all those challenges. The network is designed to model the dynamic social interactions among agents and conform to traffic rules with a semantic map. By extending the anchor-based method to multiple types of agents, the proposed method can predict multi-modal trajectories with probabilities for multi-class movements using a single model. We validate our approach on the proprietary autonomous driving dataset for the logistic delivery scenario and two publicly available datasets. The results show that our method outperforms state-of-the-art techniques and demonstrates the potential for trajectory prediction in real-world traffic.
翻译:预测周围障碍的未来轨迹是自主驾驶汽车实现高度道路安全的一项关键任务,在现实世界交通情况中轨迹预测方面存在若干挑战,包括遵守交通规则、处理社会互动、处理多级移动的交通和可能预测多模式轨迹。受人们以自身目标和周围为焦点的航行交通的自然习惯的启发,本文件展示了一种独特的动态图形关注网络,以解决所有这些挑战。该网络旨在模拟代理商之间的动态社会互动,并用语义图显示交通规则。通过将基于锚的方法推广到多种类型的代理商,拟议方法可以使用单一模型预测多级移动的概率多模式轨迹。我们验证了我们对物流交付情景专用自主驾驶数据集和两个公开提供的数据集的做法。结果显示,我们的方法超越了最新技术,并展示了真实世界交通轨迹预测的潜力。