Deep-Learning Approach for Text Detection Using Fully Convolutional Networks

Text, as one of the most influential inventions of humanity, has played an important role in human life since ancient times. The rich and precise information embodied in text is very useful in a wide range of vision-based applications such as the text data extracted from images that can provide info...

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Bibliographic Details
Published inInternational JOURNAL OF CONTENTS Vol. 14; no. 1; pp. 1 - 6
Main Authors Tung, Trieu Son, Lee, Gueesang
Format Journal Article
LanguageKorean
Published 2018
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Summary:Text, as one of the most influential inventions of humanity, has played an important role in human life since ancient times. The rich and precise information embodied in text is very useful in a wide range of vision-based applications such as the text data extracted from images that can provide information for automatic annotation, indexing, language translation, and the assistance systems for impaired persons. Therefore, natural-scene text detection with active research topics regarding computer vision and document analysis is very important. Previous methods have poor performances due to numerous false-positive and true-negative regions. In this paper, a fully-convolutional-network (FCN)-based method that uses supervised architecture is used to localize textual regions. The model was trained directly using images wherein pixel values were used as inputs and binary ground truth was used as label. The method was evaluated using ICDAR-2013 dataset and proved to be comparable to other feature-based methods. It could expedite research on text detection using deep-learning based approach in the future.
Bibliography:KISTI1.1003/JNL.JAKO201811041674183
ISSN:1738-6764
2093-7504