The University of Queensland Homepage
Go to advanced search page

Low-Cost Real-Time Gesture Recognition

Lovell, Brian C. and Heckenberg, Daniel (2002). Low-Cost Real-Time Gesture Recognition. In: ACCV2002, , (336-341). 22-25 January, 2002.

 
Attached Files (Some files may be inaccessible until you login with your UQ eSpace credentials)
Name Description MIMEType Size Downloads
gesture.pdf   gesture.pdf application/pdf 157.34KB 1477

Author(s) Lovell, Brian C.
Heckenberg, Daniel
Title of paper Low-Cost Real-Time Gesture Recognition
Conference name ACCV2002
Conference dates 22-25 January, 2002
Publication date 2002
Start page 336
End page 341
Language eng
Abstract/Summary A major impediment to developing real-time computer vision systems has been the computational power and level of skill required to process video streams in real-time. This has meant that many researchers have either analysed video streams off-line or used expensive dedicated hardware acceleration techniques. Recent software and hardware developments have greatly eased the development burden of realtime image analysis leading to the development of portable systems using cheap PC hardware and software exploiting the Multimedia Extension (MMX) instruction set of the Intel Pentium chip. This paper describes the implementation of a computationally efficient computer vision system for recognizing hand gestures using efficient coding and MMX-acceleration to achieve real-time performance on low cost hardware.
Subjects 280000 Information, Computing and Communication Sciences
Keyword(s) iris-research
 
Versions
Version Filter Type
Access Statistics: 882 Abstract Views, 1476 File Downloads Detailed Statistics
Created: Wed, 04 Feb 2004, 10:00:00 EST by Brian C. Lovell on behalf of School of Information Technol and Elec Engineering. Detailed History