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IVDA: Intelligent Real-Time Video Detection Agent for Virtual Classroom Presentation
R.Y.D. Xu, J.S. Jin, and J.G. Allen
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Abstract
DOI:
10.2316/Journal.208.2005.2.208-0844
From Journal
(208) Advanced Technology for Learning (Discontinued) - 2005
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