Quick Summary: A physically simulated humanoid is controlled by an artificial neural network which senses joint angles and controls muscle forces ... set of robot behaviors (represented by binary strings) so that the robot reaches the target state, successfully navigating the maze.
Genetic Algorithm Evolved Jump Take 2 -
A physically simulated humanoid is controlled by an artificial neural network which senses joint angles and controls muscle forces ... set of robot behaviors (represented by binary strings) so that the robot reaches the target state, successfully navigating the maze. The second video in the series where we go over two techniques for selecting parents from a population while breeding offspring!
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- A physically simulated humanoid is controlled by an artificial neural network which senses joint angles and controls muscle forces ...
- set of robot behaviors (represented by binary strings) so that the robot reaches the target state, successfully navigating the maze.
- The second video in the series where we go over two techniques for selecting parents from a population while breeding offspring!
- Same thing as -- I left it running for a while after uploading that video and this is ...
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