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Computer Vision
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ICCV 2005
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A Bilinear Illumination Model for Robust Face Recognition
15 years 20 days ago
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Jinho Lee, Baback Moghaddam, Hanspeter Pfister, Ra
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Bilinear Illumination Model
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Computer Vision
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ICCV 2005
|
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Added
15 Oct 2009
Updated
30 Oct 2009
Type
Conference
Year
2005
Where
ICCV
Authors
Jinho Lee, Baback Moghaddam, Hanspeter Pfister, Raghu Machiraju
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Researcher Info
Computer Vision Study Group
Computer Vision