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231225s2021 xx |||||o 00| ||eng c |
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|a 10.1109/TPAMI.2020.2995190
|2 doi
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|a DE-627
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|e rakwb
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|a eng
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|a Yang, Wenhan
|e verfasserin
|4 aut
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|a Single Image Deraining
|b From Model-Based to Data-Driven and Beyond
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|c 2021
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|a Text
|b txt
|2 rdacontent
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|a ƒaComputermedien
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|2 rdamedia
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|a ƒa Online-Ressource
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|a Date Revised 04.10.2021
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|a published: Print-Electronic
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|a Citation Status PubMed-not-MEDLINE
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|a The goal of single-image deraining is to restore the rain-free background scenes of an image degraded by rain streaks and rain accumulation. The early single-image deraining methods employ a cost function, where various priors are developed to represent the properties of rain and background layers. Since 2017, single-image deraining methods step into a deep-learning era, and exploit various types of networks, i.e., convolutional neural networks, recurrent neural networks, generative adversarial networks, etc., demonstrating impressive performance. Given the current rapid development, in this paper, we provide a comprehensive survey of deraining methods over the last decade. We summarize the rain appearance models, and discuss two categories of deraining approaches: model-based and data-driven approaches. For the former, we organize the literature based on their basic models and priors. For the latter, we discuss the developed ideas related to architectures, constraints, loss functions, and training datasets. We present milestones of single-image deraining methods, review a broad selection of previous works in different categories, and provide insights on the historical development route from the model-based to data-driven methods. We also summarize performance comparisons quantitatively and qualitatively. Beyond discussing the technicality of deraining methods, we also discuss the future possible directions
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|a Journal Article
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|a Tan, Robby T
|e verfasserin
|4 aut
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|a Wang, Shiqi
|e verfasserin
|4 aut
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|a Fang, Yuming
|e verfasserin
|4 aut
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|a Liu, Jiaying
|e verfasserin
|4 aut
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773 |
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|i Enthalten in
|t IEEE transactions on pattern analysis and machine intelligence
|d 1979
|g 43(2021), 11 vom: 30. Nov., Seite 4059-4077
|w (DE-627)NLM098212257
|x 1939-3539
|7 nnns
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|g volume:43
|g year:2021
|g number:11
|g day:30
|g month:11
|g pages:4059-4077
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|u http://dx.doi.org/10.1109/TPAMI.2020.2995190
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