Morphological background detection and illumination normalization of text image with poor lighting.

In this paper, some morphological transformations are used to detect the unevenly illuminated background of text images characterized by poor lighting, and to acquire illumination normalized result. Based on morphologic Top-Hat transform, the uneven illumination normalization algorithm has been carr...

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Main Authors: Guocheng Wang, Yiwen Wang, Hui Li, Xuanqi Chen, Haitao Lu, Yanpeng Ma, Chun Peng, Yijun Wang, Linyao Tang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4245115?pdf=render
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spelling doaj-3454705e1de14362a35947bb300d75212020-11-25T01:26:18ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-01911e11099110.1371/journal.pone.0110991Morphological background detection and illumination normalization of text image with poor lighting.Guocheng WangYiwen WangHui LiXuanqi ChenHaitao LuYanpeng MaChun PengYijun WangLinyao TangIn this paper, some morphological transformations are used to detect the unevenly illuminated background of text images characterized by poor lighting, and to acquire illumination normalized result. Based on morphologic Top-Hat transform, the uneven illumination normalization algorithm has been carried out, and typically verified by three procedures. The first procedure employs the information from opening based Top-Hat operator, which is a classical method. In order to optimize and perfect the classical Top-Hat transform, the second procedure, featuring the definition of multi direction illumination notion, utilizes opening by reconstruction and closing by reconstruction based on multi direction structuring elements. Finally, multi direction images are merged to the final even illumination image. The performance of the proposed algorithm is illustrated and verified through the processing of different ideal synthetic and camera collected images, with backgrounds characterized by poor lighting conditions.http://europepmc.org/articles/PMC4245115?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Guocheng Wang
Yiwen Wang
Hui Li
Xuanqi Chen
Haitao Lu
Yanpeng Ma
Chun Peng
Yijun Wang
Linyao Tang
spellingShingle Guocheng Wang
Yiwen Wang
Hui Li
Xuanqi Chen
Haitao Lu
Yanpeng Ma
Chun Peng
Yijun Wang
Linyao Tang
Morphological background detection and illumination normalization of text image with poor lighting.
PLoS ONE
author_facet Guocheng Wang
Yiwen Wang
Hui Li
Xuanqi Chen
Haitao Lu
Yanpeng Ma
Chun Peng
Yijun Wang
Linyao Tang
author_sort Guocheng Wang
title Morphological background detection and illumination normalization of text image with poor lighting.
title_short Morphological background detection and illumination normalization of text image with poor lighting.
title_full Morphological background detection and illumination normalization of text image with poor lighting.
title_fullStr Morphological background detection and illumination normalization of text image with poor lighting.
title_full_unstemmed Morphological background detection and illumination normalization of text image with poor lighting.
title_sort morphological background detection and illumination normalization of text image with poor lighting.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description In this paper, some morphological transformations are used to detect the unevenly illuminated background of text images characterized by poor lighting, and to acquire illumination normalized result. Based on morphologic Top-Hat transform, the uneven illumination normalization algorithm has been carried out, and typically verified by three procedures. The first procedure employs the information from opening based Top-Hat operator, which is a classical method. In order to optimize and perfect the classical Top-Hat transform, the second procedure, featuring the definition of multi direction illumination notion, utilizes opening by reconstruction and closing by reconstruction based on multi direction structuring elements. Finally, multi direction images are merged to the final even illumination image. The performance of the proposed algorithm is illustrated and verified through the processing of different ideal synthetic and camera collected images, with backgrounds characterized by poor lighting conditions.
url http://europepmc.org/articles/PMC4245115?pdf=render
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AT yiwenwang morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT huili morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT xuanqichen morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT haitaolu morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT yanpengma morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT chunpeng morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT yijunwang morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
AT linyaotang morphologicalbackgrounddetectionandilluminationnormalizationoftextimagewithpoorlighting
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