A SHOOTING STRATEGY WHEN MOVING ON HUMANOID ROBOTS USING INVERSE KINEMATICS AND Q -LEARNING, 133-139.

Amin Rezaeipanah, Zahra Jamshidi, and Shahram Jafari

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