Image analysis – Learning systems – Trainable classifiers or pattern recognizers
Reexamination Certificate
2007-12-25
2007-12-25
Desire, Gregory M (Department: 2624)
Image analysis
Learning systems
Trainable classifiers or pattern recognizers
C382S224000
Reexamination Certificate
active
10647722
ABSTRACT:
A method for improving scene classification of a digital image comprising the steps of: (a) providing an image; (b) systematically recomposing the image to generate an expanded set of images; and (c) using a classifier and the expanded set of images to determine a scene classification for the image, whereby the expanded set of images provides at least one of an improved classifier and an improved classification result.
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Boutell Matthew R.
Gray Robert T.
Luo Jiebo
Desire Gregory M
Eastman Kodak Company
Walker Robert L.
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