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Scene word recognition from pieces to whole
by
ZHU, Anna
, UCHIDA, Seiichi
in
Artificial neural networks
/ character integration
/ Classification
/ cluster-based segmentation
/ Computer Science
/ convolutional neural networks
/ Image contrast
/ Methods
/ Neural networks
/ Occlusion
/ Proposals
/ Research Article
/ Spatial distribution
/ text recognition
/ Words (language)
2019
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Scene word recognition from pieces to whole
by
ZHU, Anna
, UCHIDA, Seiichi
in
Artificial neural networks
/ character integration
/ Classification
/ cluster-based segmentation
/ Computer Science
/ convolutional neural networks
/ Image contrast
/ Methods
/ Neural networks
/ Occlusion
/ Proposals
/ Research Article
/ Spatial distribution
/ text recognition
/ Words (language)
2019
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Do you wish to request the book?
Scene word recognition from pieces to whole
by
ZHU, Anna
, UCHIDA, Seiichi
in
Artificial neural networks
/ character integration
/ Classification
/ cluster-based segmentation
/ Computer Science
/ convolutional neural networks
/ Image contrast
/ Methods
/ Neural networks
/ Occlusion
/ Proposals
/ Research Article
/ Spatial distribution
/ text recognition
/ Words (language)
2019
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Journal Article
Scene word recognition from pieces to whole
2019
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Overview
Convolutional neural networks (CNNs) have had great success with regard to the object classification problem. For character classification, we found that training and testing using accurately segmented character regions with CNNs resulted in higher accuracy than when roughly segmented regions were used. Therefore, we expect to extract complete character regions from scene images. Text in natural scene images has an obvious contrast with its attachments. Many methods attempt to extract characters through different segmentation techniques. However, for blurred, occluded, and complex background cases, those methods may result in adjoined or over segmented characters. In this paper, we propose a scene word recognition model that integrates words from small pieces to entire after-cluster-based segmentation. The segmented connected components are classified as four types: background, individual character proposals, adjoined characters, and stroke proposals. Individual character proposals are directly inputted to a CNN that is trained using accurately segmented character images. The sliding window strategy is applied to adjoined character regions. Stroke proposals are considered as fragments of entire characters whose locations are estimated by a stroke spatial distribution system. Then, the estimated characters from adjoined characters and stroke proposals are classified by a CNN that is trained on roughly segmented character images. Finally, a lexicondriven integration method is performed to obtain the final word recognition results. Compared to other word recognition methods, our method achieves a comparable performance on Street View Text and the ICDAR 2003 and ICDAR 2013 benchmark databases. Moreover, our method can deal with recognizing text images of occlusion and improperly segmented text images.
Publisher
Higher Education Press,Springer Nature B.V
Subject
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