A Comparison of PSO and Reinforcement Learning for Multi-Robot Obstacle Avoidance
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Humans have a remarkable way of learning, adapting and mastering new manipulation
tasks. With the current advances in Machine Learning (ML), the promise of having
robots with such capabilities seems to be on the cusp of reality. Transferring human-level
sk ...