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A new method for evaluating the subjective image quality of photographs: dynamic reference
8 years 7 months ago
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Mikko Nuutinen, Toni Virtanen, Tuomas Leisti, Terh
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Added
08 Apr 2016
Updated
08 Apr 2016
Type
Journal
Year
2016
Where
MTA
Authors
Mikko Nuutinen, Toni Virtanen, Tuomas Leisti, Terhi Mustonen, Jenni Radun, Jukka Häkkinen
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Researcher Info
MTA 1996 Study Group
Computer Vision