Obstacles Avoidance in a Self Path Planning of a Polar Robot

Human beings have become highly skilled to modify their environment and to control its conditions, thanks to the capability to create real life models about situations that let them to take advantage over the other living beings; besides, our mechanical structure gives us the ability to grasp and manipulate all kind of tools to carry out a job. Joining it with our complex braining process, the possibilities of change are unlimited.

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