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Deblurring traffic sign images based on exemplars.


ABSTRACT: Motion blur appearing in traffic sign images may lead to poor recognition results, and therefore it is of great significance to study how to deblur the images. In this paper, a novel method for deblurring traffic sign is proposed based on exemplars and several related approaches are also made. First, an exemplar dataset construction method is proposed based on multiple-size partition strategy to lower calculation cost of exemplar matching. Second, a matching criterion based on gradient information and entropy correlation coefficient is also proposed to enhance the matching accuracy. Third, L0.5-norm is introduced as the regularization item to maintain the sparsity of blur kernel. Experiments verify the superiority of the proposed approaches and extensive evaluations against state-of-the-art methods demonstrate the effectiveness of the proposed algorithm.

SUBMITTER: Li H 

PROVIDER: S-EPMC5841653 | biostudies-literature | 2018

REPOSITORIES: biostudies-literature

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Deblurring traffic sign images based on exemplars.

Li Houjie H   Qiu Tianshuang T   Luan Shengyang S   Song Haiyu H   Wu Linxiu L  

PloS one 20180307 3


Motion blur appearing in traffic sign images may lead to poor recognition results, and therefore it is of great significance to study how to deblur the images. In this paper, a novel method for deblurring traffic sign is proposed based on exemplars and several related approaches are also made. First, an exemplar dataset construction method is proposed based on multiple-size partition strategy to lower calculation cost of exemplar matching. Second, a matching criterion based on gradient informati  ...[more]

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