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Autonomous Robotics And Deep Learning 2014th Edition Nath Vishnu

  • SKU: BELL-38241734
Autonomous Robotics And Deep Learning 2014th Edition Nath Vishnu
$ 31.00 $ 45.00 (-31%)

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Autonomous Robotics And Deep Learning 2014th Edition Nath Vishnu instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 4.35 MB
Pages: 75
Author: Nath, Vishnu, Levinson, Stephen E.
ISBN: 9783319056036, 3319056034
Language: English
Year: 2014
Edition: 2014

Product desciption

Autonomous Robotics And Deep Learning 2014th Edition Nath Vishnu by Nath, Vishnu, Levinson, Stephen E. 9783319056036, 3319056034 instant download after payment.

This Springer Brief examines the combination of computer vision techniques and machine learning algorithms necessary for humanoid robots to develop “true consciousness.” It illustrates the critical first step towards reaching “deep learning,” long considered the holy grail for machine learning scientists worldwide. Using the example of the iCub, a humanoid robot which learns to solve 3D mazes, the book explores the challenges to create a robot that can perceive its own surroundings. Rather than relying solely on human programming, the robot uses physical touch to develop a neural map of its environment and learns to change the environment for its own benefit. These techniques allow the iCub to accurately solve any maze, if a solution exists, within a few iterations. With clear analysis of the iCub experiments and its results, this Springer Brief is ideal for advanced level students, researchers and professionals focused on computer vision, AI and machine learning.

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