Publication | Closed Access
Personalized handwriting recognition via biased regularization
64
Citations
11
References
2006
Year
Unknown Venue
Natural Language ProcessingEngineeringMachine LearningData ScienceAutomatic ClassificationPattern RecognitionHandwritingBiometricsKnowledge DiscoveryWriter IdentificationComputer ScienceModified Regularization TermCharacter RecognitionSimple Personalization FrameworkSupervised LearningWriter AdaptationText MiningSpeech Recognition
We present a new approach to personalized handwriting recognition. The problem, also known as writer adaptation, consists of converting a generic (user-independent) recognizer into a personalized (user-dependent) one, which has an improved recognition rate for a particular user. The adaptation step usually involves user-specific samples, which leads to the fundamental question of how to fuse this new information with that captured by the generic recognizer. We propose adapting the recognizer by minimizing a regularized risk functional (a modified SVM) where the prior knowledge from the generic recognizer enters through a modified regularization term. The result is a simple personalization framework with very good practical properties. Experiments on a 100 class real-world data set show that the number of errors can be reduced by over 40% with as few as five user samples per character.
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