Learning The Odometry On A Small Humanoid Robot

2016 IEEE International Conference on Robotics and Automation (ICRA)(2016)

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摘要
Odometry is an important element for the localization of mobile robots. For humanoid robots, it is very prone to integration errors, due to mechanical complexity, uncertainties and foot/ground contacts. Most of the time, a visual odometry is then used to encompass these problems. In this work we propose a method to compensate for odometry drifting using machine learning on a small size low-cost humanoid without vision. This method is tested on different ground conditions and exhibits a significant improvement in odometry accuracy.
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关键词
odometry learning,mobile robot localization,integration errors,mechanical complexity,system uncertainties,foot-ground contacts,visual odometry,odometry drifting compensation,machine learning,small-size low-cost humanoid robot,ground conditions,odometry accuracy improvement
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