Robots are an increasing part of our daily lives. As robots become more pervasive it is
important that we are able to interact with them naturally. The field of Human Robot
Interaction (HRI) seeks to improve interactions between human and robot. People spend
many years in their childhood learning to communicate the locations of objects naturally
to other people. When trying to communicate the location of objects, people generate
under-specified statements and then generate further repair if necessary to guide the
listener as part of an interactive dialogue. The focus in HRI up until now has been on
trying to generate non-ambiguous statements to refer to objects or locations. I create here
a dynamic method of generating spatial referring expressions, based on under-specified
statements followed if necessary by repair, as a step towards more interactive dialogue.
I present the following thesis: A robot that is able to use dynamic description methods
–using vague initial language with the ability to further repair for generating spatial
referring expressions as well as reducing the problem of combinatorial explosion, will
be a more effective tool for collaborating with people than using static non-ambiguous
descriptions. This kind of dynamic form of description is new to the field of HRI. In
socio-linguistics this form of communication is thought to lead to a least collaborative
effort, with both partners in a conversation contributing to a description.
To ensure the validity of my work, I base my work on potential real use case scenarios
for a social robot in a number of studies. I start by looking at a Robot Assisted Language
Learning scenario, in which the robot attempts to encourage the use of spatial language
in a quiz based game. As another use case I look at a nuclear waste disposal task. I also
present the initial study in which I noticed the discrepancy between how we have been
attempting to generate referring expressions, and how people communicate.
I describe how I created the dynamic systems based on human-human interactions. By
looking at two people solving the task we gather data on position to represent the state
of the action, and what participants are saying in that state. I use this to build a classifier
that determines what the robot should say at a given state of the interaction. This system
allows a robot to successfully guide a person to the correct object/location.
In my studies I find that this dynamic form of communication is more efficient in terms of
time, and distance travelled when trying to complete a task that requires spatial referring
expressions when compared to static non-ambiguous descriptions. I also find that it is
possible for people to prefer this form of communication in a complex real world task.
Date of Award | 2021 |
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Original language | English |
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Awarding Institution | |
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Supervisor | Tony Belpaeme (Other Supervisor) |
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- Human-robot interaction
- Spatial referring expressions
- Referring expression generation
- Dialogue management
- Social robotics
- Dynamic generation
- Incremental processing
Dynamic Generation of Spatial Referring Expressions for Social Robots
Wallbridge, C. (Author). 2021
Student thesis: PhD