Planning and Learning: Path-Planning for Autonomous Vehicles, a Review of the Literature

26 Jul 2022  ·  Kevin Osanlou, Christophe Guettier, Tristan Cazenave, Eric Jacopin ·

This short review aims to make the reader familiar with state-of-the-art works relating to planning, scheduling and learning. First, we study state-of-the-art planning algorithms. We give a brief introduction of neural networks. Then we explore in more detail graph neural networks, a recent variant of neural networks suited for processing graph-structured inputs. We describe briefly the concept of reinforcement learning algorithms and some approaches designed to date. Next, we study some successful approaches combining neural networks for path-planning. Lastly, we focus on temporal planning problems with uncertainty.

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