Scene text extraction based on edges and support vector regression

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Scene text extraction based on edges and support vector regression
Title:
Scene text extraction based on edges and support vector regression
Journal Title:
International Journal on Document Analysis and Recognition (IJDAR)
OA Status:
closed
Keywords:
Publication Date:
08 February 2015
Citation:
Abstract:
This paper presents a scene text extraction technique that automatically detects and segments texts from scene images. Three text-specific features are designed over image edges with which a set of candidate text boundaries is first detected. For each detected candidate text boundary, one or more candidate characters are then extracted by using a local threshold that is estimated based on the surrounding image pixels. The real characters and words are finally identified by a support vector regression model that is trained using bags-of-words representation. The proposed technique has been evaluated over the latest ICDAR-2013 Robust Reading Competition dataset. Experiments show that it obtains superior F-measures of 78.19 % and 75.24 % (on atom level), respectively, for the scene text detection and segmentation tasks.
License type:
PublisherCopyrights
Funding Info:
Description:
ISSN:
1433-2833
1433-2825
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manuscript.pdf 20.10 MB PDF Open