TY - JOUR
T1 - Generation of human-like movement from symbolized information
AU - Okajima, Shotaro
AU - Tournier, Maxime
AU - Alnajjar, Fady S.
AU - Hayashibe, Mitsuhiro
AU - Hasegawa, Yasuhisa
AU - Shimoda, Shingo
N1 - Funding Information:
This study was funded by a grant from the European Commission within its Seventh Framework Programme (IFP7-ICT-2013-10-611695: BioMot - Smart Wearable Robots with Bioinspired Sensory-Motor Skills).
Publisher Copyright:
Copyright © 2018 Okajima, Tournier, Alnajjar, Hayashibe, Hasegawa and Shimoda.
PY - 2018
Y1 - 2018
N2 - An important function missing from current robotic systems is a human-like method for creating behavior from symbolized information. This function could be used to assess the extent to which robotic behavior is human-like because it distinguishes human motion from that of human-made machines created using currently available techniques. The purpose of this research is to clarify the mechanisms that generate automatic motor commands to achieve symbolized behavior. We design a controller with a learning method called tacit learning, which considers system-environment interactions, and a transfer method called mechanical resonance mode, which transfers the control signals into a mechanical resonance mode space (MRM-space). We conduct simulations and experiments that involve standing balance control against disturbances with a two-degree-of-freedom inverted pendulum and bipedal walking control with humanoid robots. In the simulations and experiments on standing balance control, the pendulum can become upright after a disturbance by adjusting a few signals in MRM-space with tacit learning. In the simulations and experiments on bipedal walking control, the robots realize a wide variety of walking by manually adjusting a few signals in MRM-space. The results show that transferring the signals to an appropriate control space is the key process for reducing the complexity of the signals from the environment and achieving diverse behavior.
AB - An important function missing from current robotic systems is a human-like method for creating behavior from symbolized information. This function could be used to assess the extent to which robotic behavior is human-like because it distinguishes human motion from that of human-made machines created using currently available techniques. The purpose of this research is to clarify the mechanisms that generate automatic motor commands to achieve symbolized behavior. We design a controller with a learning method called tacit learning, which considers system-environment interactions, and a transfer method called mechanical resonance mode, which transfers the control signals into a mechanical resonance mode space (MRM-space). We conduct simulations and experiments that involve standing balance control against disturbances with a two-degree-of-freedom inverted pendulum and bipedal walking control with humanoid robots. In the simulations and experiments on standing balance control, the pendulum can become upright after a disturbance by adjusting a few signals in MRM-space with tacit learning. In the simulations and experiments on bipedal walking control, the robots realize a wide variety of walking by manually adjusting a few signals in MRM-space. The results show that transferring the signals to an appropriate control space is the key process for reducing the complexity of the signals from the environment and achieving diverse behavior.
KW - Control structure
KW - Human-like movement
KW - Mechanical resonance mode
KW - Symbolized information
KW - Tacit learning
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U2 - 10.3389/fnbot.2018.00043
DO - 10.3389/fnbot.2018.00043
M3 - Article
AN - SCOPUS:85074155797
SN - 1662-5218
VL - 12
JO - Frontiers in Neurorobotics
JF - Frontiers in Neurorobotics
M1 - 43
ER -