Image analysis – Pattern recognition – Feature extraction
Reexamination Certificate
2006-09-27
2010-06-29
Ahmed, Samir A (Department: 2624)
Image analysis
Pattern recognition
Feature extraction
C382S224000, C382S108000, C382S190000, C382S274000, C382S155000
Reexamination Certificate
active
07747079
ABSTRACT:
In a first exemplary embodiment of the present invention, an automated, computerized method is provided for determining illumination flux in an image. According to a feature of the present invention, the method comprises the steps of performing a computer learning technique to determine spatio-spectral information for the images, and utilizing the spatio-spectral information to identify illumination flux.
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Dana Kristin Jean
Friedhoff Richard Mark
Maxwell Bruce Allen
Smith Casey Arthur
Ahmed Samir A
Bayat Ali
D'Arienzo, Jr. Felix L.
Davidson Davidson & Kappel LLC
Tandent Vision Science, Inc.
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