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JAISE
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JAISE 2011
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Multi-camera vision for smart environments
13 years 5 months ago
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On September 21, 2010, the author successfully defended her Ph.D. thesis entitled Multi-Camera Vision for Smart Environments at Stanford University.
Chen Wu
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JAISE 2011
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Multi-Camera Vision
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Smart Environments
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Stanford University
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Added
14 May 2011
Updated
14 May 2011
Type
Journal
Year
2011
Where
JAISE
Authors
Chen Wu
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Researcher Info
Algorithms Study Group
Computer Vision