islambarakat99 / Multi-Robot-Formation-Control-using-Deep-Reinforcement-Learning
A leader-follower formation control using deep reinforcement learning environment, In which every agent can learn to follow the leader agent by keeping track of a certain distance to that leader, avoiding obstacles, and avoiding collision with the other agents.
☆44Updated last year
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