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Learning of Key Pose Evaluation for Efficient Multi-contact Motion Planner

Shintaro Noda, Masaki Murooka, Yuki Asano, Ryusuke Ishizaki, Tomohiro Kawakami, Tomoki Watabe, Kei Okada, Takahide Yoshiike, Masayuki Inaba

Year
2020
Citations
3

Abstract

It is necessary to use not only foot but also hand, knee and other body parts to support body weight for locomotion in uneven terrain. Such multi-contact motion planning is an important research topic including lots of previous works; however, a problem of computational speed of planning is still remaining. In this paper, we propose a learning-based algorithm to speed up the planning. The algorithm reduces replanning of contact states by learning an evaluation function of key pose to reach goal. We investigated the learning performance by comparing three neural network configurations and two activation function. This research aims at achieving robust robotics system in unknown environments.

Keywords

Key (lock)Computer scienceMotion planningPlannerArtificial intelligenceMotion (physics)RoboticsFunction (biology)RobotArtificial neural network

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