Handwritten Character Recognition Using Active Semi-supervised Learning

© 2018, Springer Nature Switzerland AG. Constructing a handwritten character recognition model is considered challenging partly due to the high variety of handwriting styles and the limited amount of training data. In practice, only a handful of labeled examples from limited number of writers are pr...

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Main Authors: Papangkorn Inkeaw, Jakramate Bootkrajang, Teresa Gonçalves, Jeerayut Chaijaruwanich
Format: Book Series
Published: 2018
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http://cmuir.cmu.ac.th/jspui/handle/6653943832/62966
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Institution: Chiang Mai University
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spelling th-cmuir.6653943832-629662018-12-14T04:03:20Z Handwritten Character Recognition Using Active Semi-supervised Learning Papangkorn Inkeaw Jakramate Bootkrajang Teresa Gonçalves Jeerayut Chaijaruwanich Computer Science Mathematics © 2018, Springer Nature Switzerland AG. Constructing a handwritten character recognition model is considered challenging partly due to the high variety of handwriting styles and the limited amount of training data. In practice, only a handful of labeled examples from limited number of writers are provided during the training of the model. Still, a large collection of already available unlabeled handwritten character data from several sources are often left unused. To alleviate the problem of small training sample size, we propose a graph-based active semi-supervised learning approach for handwritten character recognizer construction. The method iteratively builds a neighborhood graph of all examples including the unlabeled ones, assigns pseudo labels to the unlabeled data and retrains the model. Additionally, the label of the least confident pseudo label according to a newly proposed uncertainty measure is to be requested from the oracle. Experiments on NIST handwritten digits dataset demonstrated that the proposed learning method better utilizes the unlabeled data compared to existing approaches as measured by recognition accuracy. In addition, our active learning strategy is also more effective compared to baseline strategies. 2018-12-14T03:53:21Z 2018-12-14T03:53:21Z 2018-01-01 Book Series 16113349 03029743 2-s2.0-85057110117 10.1007/978-3-030-03493-1_8 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85057110117&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/62966
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
topic Computer Science
Mathematics
spellingShingle Computer Science
Mathematics
Papangkorn Inkeaw
Jakramate Bootkrajang
Teresa Gonçalves
Jeerayut Chaijaruwanich
Handwritten Character Recognition Using Active Semi-supervised Learning
description © 2018, Springer Nature Switzerland AG. Constructing a handwritten character recognition model is considered challenging partly due to the high variety of handwriting styles and the limited amount of training data. In practice, only a handful of labeled examples from limited number of writers are provided during the training of the model. Still, a large collection of already available unlabeled handwritten character data from several sources are often left unused. To alleviate the problem of small training sample size, we propose a graph-based active semi-supervised learning approach for handwritten character recognizer construction. The method iteratively builds a neighborhood graph of all examples including the unlabeled ones, assigns pseudo labels to the unlabeled data and retrains the model. Additionally, the label of the least confident pseudo label according to a newly proposed uncertainty measure is to be requested from the oracle. Experiments on NIST handwritten digits dataset demonstrated that the proposed learning method better utilizes the unlabeled data compared to existing approaches as measured by recognition accuracy. In addition, our active learning strategy is also more effective compared to baseline strategies.
format Book Series
author Papangkorn Inkeaw
Jakramate Bootkrajang
Teresa Gonçalves
Jeerayut Chaijaruwanich
author_facet Papangkorn Inkeaw
Jakramate Bootkrajang
Teresa Gonçalves
Jeerayut Chaijaruwanich
author_sort Papangkorn Inkeaw
title Handwritten Character Recognition Using Active Semi-supervised Learning
title_short Handwritten Character Recognition Using Active Semi-supervised Learning
title_full Handwritten Character Recognition Using Active Semi-supervised Learning
title_fullStr Handwritten Character Recognition Using Active Semi-supervised Learning
title_full_unstemmed Handwritten Character Recognition Using Active Semi-supervised Learning
title_sort handwritten character recognition using active semi-supervised learning
publishDate 2018
url https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85057110117&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/62966
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