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The development of test action bank for active robot learning

  • Tao Cao

Student thesis: Master's thesis

Abstract

In the rapidly expanding service robotics research area, interactions between robots and humans become increasingly cornmon as more and more jobs will require cooperation between the robots and their human users. It is important to address cooperation between a robot and its user. ARL is a promising approach which facilitates a robot to develop high-order beliefs by actively performing test actions in order to obtain its user's intention from his responses to the actions. Test actions are crucial to ARL. This study carried out primary research on developing a Test Action Bank (TAB) to provide test actions for ARL. In this study, a verb-based task classifier was developed to extract tasks from user's commands. Taught tasks and their corresponding test actions were proposed and stored in database to establish the TAB. A backward test actions retrieval method was used to locate a task in a task tree and retrieve its test actions from TAB. A simulation environment was set up with a service robot model and a user model to test TAB and demonstrate some test actions. Simulations were also perfonned in this study, the simulation results proved TAB can successfully provide test actions according to different tasks and the proposed service robot model can demonstrate test actions.
Date of AwardNov 2009
Original languageEnglish
Awarding Institution
  • University of Bedfordshire
SupervisorDayou Li (Supervisor)

Keywords

  • H671 Robotics
  • Robotics
  • Active Robot Learning
  • Test Action Bank
  • Human-Robot Interaction;

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