A behavioral approach to human-robot communication

Robots are increasingly capable of co-existing with human beings in the places where we live and work. I believe, however, for robots to collaborate and assist human beings in their daily lives, new methods are required for enhancing human-robot communication. In this dissertation, I focus on how a...

Full description

Bibliographic Details
Main Author: Ou, Shichao
Language:ENG
Published: ScholarWorks@UMass Amherst 2010
Subjects:
Online Access:https://scholarworks.umass.edu/dissertations/AAI3397738
id ndltd-UMASS-oai-scholarworks.umass.edu-dissertations-5614
record_format oai_dc
spelling ndltd-UMASS-oai-scholarworks.umass.edu-dissertations-56142020-12-02T14:26:07Z A behavioral approach to human-robot communication Ou, Shichao Robots are increasingly capable of co-existing with human beings in the places where we live and work. I believe, however, for robots to collaborate and assist human beings in their daily lives, new methods are required for enhancing human-robot communication. In this dissertation, I focus on how a robot can acquire and refine expressive and receptive communication skills with human beings. I hypothesize that communication has its roots in motor behavior and present an approach that is unique in the following aspects: (1) representations of humans and the skills for interacting with them are learned in the same way as the robot learns to interact with other “objects,” (2) expressive behavior naturally emerges as the result of the robot discovering new utility in existing manual behavior in a social context, and (3) symmetry in communicative behavior can be exploited to bootstrap the learning of receptive behavior. Experiments have been designed to evaluate the approach: (1) as a computational framework for learning increasingly comprehensive models and behavior for communicating with human beings and, (2) from a human-robot interaction perspective that can adapt to a variety of human behavior. Results from these studies illustrate that the robot successfully acquired a variety of expressive pointing gestures using multiple limbs and eye gaze, and the perceptual skills with which to recognize and respond to similar gestures from humans. Due to variations in human reactions over the training subjects, the robot developed a preference for certain gestures over others. These results support the experimental hypotheses and offer insights for extensions of the computation framework and experimental designs for future studies. 2010-01-01T08:00:00Z text https://scholarworks.umass.edu/dissertations/AAI3397738 Doctoral Dissertations Available from Proquest ENG ScholarWorks@UMass Amherst Computer science
collection NDLTD
language ENG
sources NDLTD
topic Computer science
spellingShingle Computer science
Ou, Shichao
A behavioral approach to human-robot communication
description Robots are increasingly capable of co-existing with human beings in the places where we live and work. I believe, however, for robots to collaborate and assist human beings in their daily lives, new methods are required for enhancing human-robot communication. In this dissertation, I focus on how a robot can acquire and refine expressive and receptive communication skills with human beings. I hypothesize that communication has its roots in motor behavior and present an approach that is unique in the following aspects: (1) representations of humans and the skills for interacting with them are learned in the same way as the robot learns to interact with other “objects,” (2) expressive behavior naturally emerges as the result of the robot discovering new utility in existing manual behavior in a social context, and (3) symmetry in communicative behavior can be exploited to bootstrap the learning of receptive behavior. Experiments have been designed to evaluate the approach: (1) as a computational framework for learning increasingly comprehensive models and behavior for communicating with human beings and, (2) from a human-robot interaction perspective that can adapt to a variety of human behavior. Results from these studies illustrate that the robot successfully acquired a variety of expressive pointing gestures using multiple limbs and eye gaze, and the perceptual skills with which to recognize and respond to similar gestures from humans. Due to variations in human reactions over the training subjects, the robot developed a preference for certain gestures over others. These results support the experimental hypotheses and offer insights for extensions of the computation framework and experimental designs for future studies.
author Ou, Shichao
author_facet Ou, Shichao
author_sort Ou, Shichao
title A behavioral approach to human-robot communication
title_short A behavioral approach to human-robot communication
title_full A behavioral approach to human-robot communication
title_fullStr A behavioral approach to human-robot communication
title_full_unstemmed A behavioral approach to human-robot communication
title_sort behavioral approach to human-robot communication
publisher ScholarWorks@UMass Amherst
publishDate 2010
url https://scholarworks.umass.edu/dissertations/AAI3397738
work_keys_str_mv AT oushichao abehavioralapproachtohumanrobotcommunication
AT oushichao behavioralapproachtohumanrobotcommunication
_version_ 1719363156373929984