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Human Action Recognition REU 2011

Taylor Rassmann. Human Action Recognition REU 2011. Background. Student at the University of Central Florida Burnett Honors College Fall 2008 – Fall 2011 Major: Computer Science Upper Division Electives: Robot Vision AI for Game Programming Artificial Intelligence. Work Experience.

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Human Action Recognition REU 2011

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  1. Taylor Rassmann Human Action RecognitionREU 2011

  2. Background • Student at the University of Central Florida • Burnett Honors College • Fall 2008 – Fall 2011 • Major: Computer Science • Upper Division Electives: • Robot Vision • AI for Game Programming • Artificial Intelligence

  3. Work Experience • Institute of Simulation and Training (August 2009 – April 2011) • Allogy Project: Java, PHP, XML, JSON, HTML • Team of fourteen working on a mobile device learning application • Application field tested in Nairobi, Kenya • Creation of a parser and UI system for test taking • Creation of PHP programs for email processing and other scripting • Creation of Ruby on Rails backend • Applied Cognition and Technology Lab (October 2010 – May 2011) • Online survey creator • Creation of multiple different surveys for Psychology Department at UCF

  4. Current Research • Human Action Recognition • Kinematic features derived from optical flow • Testing on UCF50 dataset • Testing two different learning methods • Bag of words • Multiple Instance learning

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