CRLLK: Constrained Reinforcement Learning for Lane Keeping in Autonomous Driving

Gao, Xinwei, Singh, Arambam James, Royyuru, Gangadhar, Yuhas, Michael, Easwaran, Arvind

arXiv.org Artificial Intelligence 

Lane keeping in autonomous driving systems requires scenario-specific weight tuning for different objectives. We formulate lane-keeping as a constrained reinforcement learning problem, where weight coefficients are automatically learned along with the policy, eliminating the need for scenario-specific tuning. Empirically, our approach outperforms traditional RL in efficiency and reliability. Additionally, real-world demonstrations validate its practical value for real-world autonomous driving.

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