Single Image Dehazing Using Sparse Contextual Representation
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In this paper, we propose a novel method to remove haze from a single hazy input image based on the sparse representation. In our method, the sparse representation is proposed to be used as a contextual regularization tool, which can reduce the block artifacts and halos produced by only using dark channel prior without soft matting as the transmission is not always constant in a local patch. A novel way to use dictionary is proposed to smooth an image and generate the sharp dehazed result. Experimental results demonstrate that our proposed method performs favorably against the state-of-the-art dehazing methods and produces high-quality dehazed and vivid color results.
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2021 ◽
Vol E104.D
(10)
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pp. 1758-1761
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2016 ◽
Vol 31
(8)
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pp. 840-845
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2020 ◽
Vol 29
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pp. 2692-2701
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