Image analysis – Pattern recognition – Context analysis or word recognition
Reexamination Certificate
2011-05-17
2011-05-17
Le, Vu (Department: 2624)
Image analysis
Pattern recognition
Context analysis or word recognition
C382S190000, C382S195000, C382S224000, C382S228000
Reexamination Certificate
active
07945101
ABSTRACT:
A method employing a hybrid classification model is used to perform optical character recognition operations for an image. Image data from the image is provided to a generative classification model of the hybrid model, and generative image classifications operations are performed, generating a feature data set which is outputted from the generative classification model. This feature data set is then provided to the discriminative classification model, and discriminative classification operations are performed to generate a classification of the image.
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Chen Jindong
Wang Yizhou
Fay Sharpe LLP
Le Vu
Palo Alto Research Center Incorporated
Park Soo Jin
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