TY - JOUR
T1 - Sensorimotor input as a language generalisation tool
T2 - a neurorobotics model for generation and generalisation of noun-verb combinations with sensorimotor inputs
AU - Zhong, Junpei
AU - Peniak, Martin
AU - Tani, Jun
AU - Ogata, Tetsuya
AU - Cangelosi, Angelo
N1 - Funding Information:
Acknowledgements This research has been supported by the EU project POETICON++ under Grant Agreement 288382, the UK EPSRC project BABEL and Waseda SGU Program and the New Energy and Industrial Technology Development Organization (NEDO) of Japan. We are grateful to Dr. Christopher Ford for his helpful review.
Publisher Copyright:
© 2018, The Author(s).
PY - 2019/6/15
Y1 - 2019/6/15
N2 - The paper presents a neurorobotics cognitive model explaining the understanding and generalisation of nouns and verbs combinations when a vocal command consisting of a verb-noun sentence is provided to a humanoid robot. The dataset used for training was obtained from object manipulation tasks with a humanoid robot platform; it includes 9 motor actions and 9 objects placing placed in 6 different locations), which enables the robot to learn to handle real-world objects and actions. Based on the multiple time-scale recurrent neural networks, this study demonstrates its generalisation capability using a large data-set, with which the robot was able to generalise semantic representation of novel combinations of noun-verb sentences, and therefore produce the corresponding motor behaviours. This generalisation process is done via the grounding process: different objects are being interacted, and associated, with different motor behaviours, following a learning approach inspired by developmental language acquisition in infants. Further analyses of the learned network dynamics and representations also demonstrate how the generalisation is possible via the exploitation of this functional hierarchical recurrent network.
AB - The paper presents a neurorobotics cognitive model explaining the understanding and generalisation of nouns and verbs combinations when a vocal command consisting of a verb-noun sentence is provided to a humanoid robot. The dataset used for training was obtained from object manipulation tasks with a humanoid robot platform; it includes 9 motor actions and 9 objects placing placed in 6 different locations), which enables the robot to learn to handle real-world objects and actions. Based on the multiple time-scale recurrent neural networks, this study demonstrates its generalisation capability using a large data-set, with which the robot was able to generalise semantic representation of novel combinations of noun-verb sentences, and therefore produce the corresponding motor behaviours. This generalisation process is done via the grounding process: different objects are being interacted, and associated, with different motor behaviours, following a learning approach inspired by developmental language acquisition in infants. Further analyses of the learned network dynamics and representations also demonstrate how the generalisation is possible via the exploitation of this functional hierarchical recurrent network.
KW - Developmental robotics
KW - Language learning
KW - Multiple time-scale recurrent neural network
KW - Neurorobotics
KW - Recurrent artificial neural networks
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U2 - 10.1007/s10514-018-9793-7
DO - 10.1007/s10514-018-9793-7
M3 - Article
AN - SCOPUS:85052556161
SN - 0929-5593
VL - 43
SP - 1271
EP - 1290
JO - Autonomous Robots
JF - Autonomous Robots
IS - 5
ER -