Feb. 12, 2024, 5:42 a.m. | Michael Y. Fatemi Wesley A. Suttle Brian M. Sadler

cs.LG updates on arXiv.org arxiv.org

Deceptive path planning (DPP) is the problem of designing a path that hides its true goal from an outside observer. Existing methods for DPP rely on unrealistic assumptions, such as global state observability and perfect model knowledge, and are typically problem-specific, meaning that even minor changes to a previously solved problem can force expensive computation of an entirely new solution. Given these drawbacks, such methods do not generalize to unseen problem instances, lack scalability to realistic problem sizes, and preclude …

assumptions cs.lg designing global graph graph neural networks knowledge meaning networks neural networks observability path planning reinforcement reinforcement learning state true via

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