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ICMI
2003
Springer

Georgia tech gesture toolkit: supporting experiments in gesture recognition

13 years 9 months ago
Georgia tech gesture toolkit: supporting experiments in gesture recognition
Gesture recognition is becoming a more common interaction tool in the fields of ubiquitous and wearable computing. Designing a system to perform gesture recognition, however, can be a cumbersome task. Hidden Markov models (HMMs), a pattern recognition technique commonly used in speech recognition, can be used for recognizing certain classes of gestures. Existing HMM toolkits for speech recognition can be adapted to perform gesture recognition, but doing so requires significant knowledge of the speech recognition literature and its relation to gesture recognition. This paper introduces the Georgia Tech Gesture Toolkit GT2 k which leverages Cambridge University’s speech recognition toolkit, HTK, to provide tools that support gesture recognition research. GT2 k provides capabilities for training models and allows for both real–time and off-line recognition. This paper presents four ongoing projects that utilize the toolkit in a variety of domains. Categories and Subject Descriptor...
Tracy L. Westeyn, Helene Brashear, Amin Atrash, Th
Added 07 Jul 2010
Updated 07 Jul 2010
Type Conference
Year 2003
Where ICMI
Authors Tracy L. Westeyn, Helene Brashear, Amin Atrash, Thad Starner
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