Autonomous learning of action-word semantics in a humanoid robot
Niehaus, Logan
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https://hdl.handle.net/2142/24151
Description
Title
Autonomous learning of action-word semantics in a humanoid robot
Author(s)
Niehaus, Logan
Issue Date
2011-05-25T14:57:30Z
Director of Research (if dissertation) or Advisor (if thesis)
Levinson, Stephen E.
Department of Study
Electrical & Computer Eng
Discipline
Electrical & Computer Engr
Degree Granting Institution
University of Illinois at Urbana-Champaign
Degree Name
M.S.
Degree Level
Thesis
Keyword(s)
language acquisition
autonomous mental development
cognitive robotics
embodied cognition
Abstract
For creation of an artificial agent that is capable of using language naturally, models that only manipulate symbols or classify speech are ineffective. The semantic information which language conveys must be grounded in the agent’s complete sensorimotor experience. Typically, patterns from visual, auditory, and proprioceptive data streams which share the same conceptual cause are fused together in an associative memory at the core of the language
model. Coupling of motor and auditory modalities, which is crucial for a large part of semantic understanding, presents a particularly difficult challenge. Words and actions both need models capable of capturing spatial and temporal structure, and training algorithms that can learn in a self-organizing, incremental fashion. Presented is a method for online learning of word and action lexicons based on the hidden Markov model. The model is then evaluated through action-word learning experiments implemented on a humanoid robot.
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