DocumentCode :
2147852
Title :
A Semi-supervised SVM Framework for Character Recognition
Author :
Arora, Amit ; Namboodiri, Anoop M.
Author_Institution :
Center for Visual Inf. Technol., IIIT, Hyderabad, India
fYear :
2011
fDate :
18-21 Sept. 2011
Firstpage :
1105
Lastpage :
1109
Abstract :
In order to incorporate various writing styles or fonts in a character recognizer, it is critical that a large amount of labeled data is available, which is difficult to obtain. In this work, we present a semi-supervised SVM based framework that can incorporate the unlabeled data for improvement of recognition performance. Existing semi supervised learning methods for SVMs work well only for two-class problems. We propose a method to extend this to large-class problems by incorporating a participation term into the optimization process. The proposed system uses a Decision Directed Acyclic Graphs (DDAG) of SVM classifiers, which have proven to be very effective for such recognition problems. We present experimental results on three different digits dataset with varying complexity, as well as additional multi-class datasets from the UCI repository for comparison with existing approaches. In addition we show that approximate annotations at the word or sentence level can be used for evaluation as well as active learning to further improve the recognition results.
Keywords :
character recognition; directed graphs; document image processing; learning (artificial intelligence); optimisation; support vector machines; SVM classifiers; UCI repository; character recognition; decision directed acyclic graphs; digits dataset; optimization process; semisupervised SVM based framework; semisupervised learning methods; Accuracy; Character recognition; Machine learning; Optimization; Presses; Support vector machines; Training; Character Recognition; Decision Directed Acyclic Graphs; Semi-Supervised SVM;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Document Analysis and Recognition (ICDAR), 2011 International Conference on
Conference_Location :
Beijing
ISSN :
1520-5363
Print_ISBN :
978-1-4577-1350-7
Electronic_ISBN :
1520-5363
Type :
conf
DOI :
10.1109/ICDAR.2011.223
Filename :
6065481
Link To Document :
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