Title:
Object categorization for affordance prediction

dc.contributor.advisor Rehg, James M.
dc.contributor.author Sun, Jie en_US
dc.contributor.committeeMember Wang, Jia
dc.contributor.committeeMember Ammar, Mostafa H.
dc.contributor.committeeMember Feamster, Nick
dc.contributor.committeeMember Ma, Xiaoli
dc.contributor.department Computing en_US
dc.date.accessioned 2008-09-17T19:26:03Z
dc.date.available 2008-09-17T19:26:03Z
dc.date.issued 2008-07-01 en_US
dc.description.abstract A fundamental requirement of any autonomous robot system is the ability to predict the affordances of its environment, which define how the robot can interact with various objects. In this dissertation, we demonstrate that the conventional direct perception approach can indeed be applied to the task of training robots to predict affordances, but it does not consider that objects can be grouped into categories such that objects of the same category have similar affordances. Although the connection between object categorization and the ability to make predictions of attributes has been extensively studied in cognitive science research, it has not been systematically applied to robotics in learning to predict a number of affordances from recognizing object categories. We develop a computational framework of learning and predicting affordances where a robot explicitly learns the categories of objects present in its environment in a partially supervised manner, and then conducts experiments to interact with the objects to both refine its model of categories and the category-affordance relationships. In comparison to the direct perception approach, we demonstrate that categories make the affordance learning problem scalable, in that they make more effective use of scarce training data and support efficient incremental learning of new affordance concepts. Another key aspect of our approach is to leverage the ability of a robot to perform experiments on its environment and thus gather information independent of a human trainer. We develop the theoretical underpinnings of category-based affordance learning and validate our theory on experiments with physically-situated robots. Finally, we refocus the object categorization problem of computer vision back to the theme of autonomous agents interacting with a physical world consisting of categories of objects. This enables us to reinterpret and extend the Gluck-Corter category utility function for the task of learning categorizations for affordance prediction. en_US
dc.description.degree Ph.D. en_US
dc.identifier.uri http://hdl.handle.net/1853/24625
dc.publisher Georgia Institute of Technology en_US
dc.subject Affordance en_US
dc.subject Categorization en_US
dc.subject Robotics en_US
dc.subject Perception en_US
dc.subject Learning en_US
dc.subject Recognition en_US
dc.subject.lcsh Robots Experiments
dc.subject.lcsh Autonomous robots
dc.subject.lcsh Categorization (Psychology)
dc.title Object categorization for affordance prediction en_US
dc.type Text
dc.type.genre Dissertation
dspace.entity.type Publication
local.contributor.advisor Rehg, James M.
local.contributor.corporatename College of Computing
local.contributor.corporatename Institute for Robotics and Intelligent Machines (IRIM)
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relation.isOrgUnitOfPublication 66259949-abfd-45c2-9dcc-5a6f2c013bcf
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