Human-vehicle cooperative driving serves as a vital bridge to fully autonomous driving by improving driving flexibility and gradually building driver trust and acceptance of autonomous technology. To establish more natural and effective human-vehicle interaction, we propose a Human-Oriented Cooperative Driving (HOCD) approach that primarily minimizes human-machine conflict by prioritizing driver intention and state. In implementation, we take both tactical and operational levels into account to ensure seamless human-vehicle cooperation. At the tactical level, we design an intention-aware trajectory planning method, using intention consistency cost as the core metric to evaluate the trajectory and align it with driver intention. At the operational level, we develop a control authority allocation strategy based on reinforcement learning, optimizing the policy through a designed reward function to achieve consistency between driver state and authority allocation. The results of simulation and human-in-the-loop experiments demonstrate that our proposed approach not only aligns with driver intention in trajectory planning but also ensures a reasonable authority allocation. Compared to other cooperative driving approaches, the proposed HOCD approach significantly enhances driving performance and mitigates human-machine conflict.The code is available at https://github.com/i-Qin/HOCD.
翻译:人车协同驾驶通过提升驾驶灵活性并逐步建立驾驶员对自动驾驶技术的信任与接受度,成为实现完全自动驾驶的重要桥梁。为建立更自然高效的人车交互,本文提出一种面向人类的协同驾驶方法,该方法以驾驶员意图与状态为优先考量,旨在最小化人机冲突。在实现层面,我们同时考虑战术与操作层面以确保人车协同的无缝衔接。在战术层面,我们设计了一种意图感知的轨迹规划方法,以意图一致性成本为核心指标评估轨迹并使其与驾驶员意图保持一致。在操作层面,我们开发了一种基于强化学习的控制权分配策略,通过设计的奖励函数优化策略,以实现驾驶员状态与权限分配的一致性。仿真与人机回环实验结果表明,所提方法不仅在轨迹规划中符合驾驶员意图,还能确保合理的权限分配。与其他协同驾驶方法相比,所提HOCD方法显著提升了驾驶性能并有效缓解了人机冲突。代码发布于 https://github.com/i-Qin/HOCD。