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Evaluation of an on-line adaptive gesture interface with command prediction
Full text PdfPdf (335 KB)
Source GI; Vol. 112 archive
Proceedings of Graphics Interface 2005 table of contents
Victoria, British Columbia
SESSION: Hand/eye interaction table of contents
Pages: 187 - 194  
Year of Publication: 2005
ISBN ~ ISSN:0713-5424 , 1-56881-265-5
Authors
Xiang Cao  University of Toronto
Ravin Balakrishnan  University of Toronto
Sponsor
CHCCS : The Canadian Human-Computer Communications Society
Publisher
Canadian Human-Computer Communications Society  School of Computer Science, University of Waterloo, Waterloo, Ontario, Canada
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ABSTRACT

We present an evaluation of a hybrid gesture interface framework that combines on-line adaptive gesture recognition with a command predictor. Machine learning techniques enable on-line adaptation to differences in users' input patterns when making gestures, and exploit regularities in command sequences to improve recognition performance. A prototype using 2D single-stroke gestures was implemented with a minimally intrusive user interface for on-line re-training. Results of a controlled user experiment show that the hybrid adaptive system significantly improved overall gesture recognition performance, and reduced users' need to practice making the gestures before achieving good results.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

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Collaborative Colleagues:
Xiang Cao: colleagues
Ravin Balakrishnan: colleagues