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231225s2020 xx |||||o 00| ||eng c |
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|a 10.1109/TIP.2020.2991509
|2 doi
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|a pubmed24n1308.xml
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|a (DE-627)NLM309693667
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|a (NLM)32386154
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|a DE-627
|b ger
|c DE-627
|e rakwb
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|a eng
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1 |
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|a Li, Runde
|e verfasserin
|4 aut
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1 |
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|a Task-Oriented Network for Image Dehazing
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|c 2020
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|a Text
|b txt
|2 rdacontent
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|a ƒaComputermedien
|b c
|2 rdamedia
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|a ƒa Online-Ressource
|b cr
|2 rdacarrier
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|a Date Revised 27.02.2024
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|a published: Print-Electronic
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|a Citation Status Publisher
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|a Haze interferes the transmission of scene radiation and significantly degrades color and details of outdoor images. Existing deep neural networks-based image dehazing algorithms usually use some common networks. The network design does not model the image formation of haze process well, which accordingly leads to dehazed images containing artifacts and haze residuals in some special scenes. In this paper, we propose a task-oriented network for image dehazing, where the network design is motivated by the image formation of haze process. The task-oriented network involves a hybrid network containing an encoder and decoder network and a spatially variant recurrent neural network which is derived from the hazy process. In addition, we develop a multi-stage dehazing algorithm to further improve the accuracy by filtering haze residuals in a step-bystep fashion. To constrain the proposed network, we develop a dual composition loss, content-based pixel-wise loss and total variation constraint. We train the proposed network in an end-to-end manner and analyze its effect on image dehazing. Experimental results demonstrate that the proposed algorithm achieves favorable performance against state-of-the-art dehazing methods
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|a Journal Article
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|a Pan, Jinshan
|e verfasserin
|4 aut
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700 |
1 |
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|a He, Min
|e verfasserin
|4 aut
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700 |
1 |
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|a Li, Zechao
|e verfasserin
|4 aut
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700 |
1 |
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|a Tang, Jinhui
|e verfasserin
|4 aut
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773 |
0 |
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|i Enthalten in
|t IEEE transactions on image processing : a publication of the IEEE Signal Processing Society
|d 1992
|g (2020) vom: 06. Mai
|w (DE-627)NLM09821456X
|x 1941-0042
|7 nnns
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773 |
1 |
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|g year:2020
|g day:06
|g month:05
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|u http://dx.doi.org/10.1109/TIP.2020.2991509
|3 Volltext
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|a GBV_ILN_350
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|a AR
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|j 2020
|b 06
|c 05
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