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Elsevier DOI
1712
BibRef
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ICCV15(226-234)
IEEE DOI
1602
Scattering media.
Atmospheric modeling
BibRef
Li, B.,
Ren, W.,
Fu, D.,
Tao, D.,
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Wang, Z.,
Benchmarking Single-Image Dehazing and Beyond,
IP(28), No. 1, January 2019, pp. 492-505.
IEEE DOI
1810
Task analysis, Benchmark testing, Measurement,
Atmospheric modeling, Training, Dehazing, detection,
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Harish Babu, G.,
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Elsevier DOI
1806
Survey, Haze Removal. Opalescent, Image dehazing, Image restoration,
Computational time, Machine learning, Deep learning, Hardware implementation
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Zhang, L.,
Huang, S.,
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Zhao, S.,
Dehazing Evaluation: Real-World Benchmark Datasets, Criteria, and
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IEEE DOI
2007
Measurement, Benchmark testing, Indexes, Image restoration,
Distortion, Image quality, Reliability, Benchmark dataset,
FR-IQA
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Elsevier DOI
2212
Sand dust image, Benchmark dataset, Image reconstruction,
Comprehensive evaluation, Convolutional neural networks
BibRef
Narayanan, P.[Priya],
Hu, X.[Xin],
Wu, Z.Y.[Zhen-Yu],
Thielke, M.D.[Matthew D.],
Rogers, J.G.[John G.],
Harrison, A.V.[Andre V.],
d'Agostino, J.A.[John A.],
Brown, J.D.[James D],
Quang, L.P.[Long P.],
Uplinger, J.R.[James R.],
Kwon, H.S.[Hee-Sung],
Wang, Z.Y.[Zhang-Yang],
A Multi-Purpose Realistic Haze Benchmark With Quantifiable Haze
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IP(32), 2023, pp. 3481-3492.
IEEE DOI
2307
Detectors, Benchmark testing, Visualization, Scattering,
Object detection, Image color analysis, Atmospheric modeling, benchmarking
BibRef
Fu, H.[Hang],
Ling, Z.Y.[Zi-Yan],
Sun, G.[Genyun],
Ren, J.C.[Jin-Chang],
Zhang, A.[Aizhu],
Zhang, L.[Li],
Jia, X.P.[Xiu-Ping],
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PandRS(218), 2024, pp. 663-677.
Elsevier DOI
2412
Hyperspectral image (HSI), Dehazing, HyperDehazing dataset,
HyperDehazeNet, Haze distribution characteristics
BibRef
Chen, J.[Jiyou],
Yang, G.[Gaobo],
Wang, S.[Shengchun],
Wang, D.[Dewang],
Liao, X.[Xin],
Image Dehazing Assessment: A Real-World Dataset and a Haze
Density-Aware Criteria,
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IEEE DOI
2404
Task analysis, Image quality, Distortion, Transfer learning,
Benchmark testing, Training, Meteorology, benchmark dataset
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Gui, J.[Jie],
Cong, X.F.[Xiao-Feng],
Cao, Y.[Yuan],
Ren, W.Q.[Wen-Qi],
Zhang, J.[Jun],
Zhang, J.[Jing],
Cao, J.X.[Jiu-Xin],
Tao, D.C.[Da-Cheng],
A Comprehensive Survey and Taxonomy on Single Image Dehazing Based on
Deep Learning,
Surveys(55), No. 13s, July 2023, pp. xx-yy.
DOI Link
2309
Survey, Dehazing. supervised, unsupervised, semi-supervised, Image dehazing,
atmospheric scattering model
BibRef
Zhou, H.[Heng],
Liu, X.X.[Xiao-Xiong],
Zhang, Z.X.[Zhen-Xi],
Yun, J.[Jieheng],
Li, C.Y.[Cheng-Yang],
Yang, Y.C.[Yun-Chu],
Xia, D.[Dongyi],
Tian, C.[Chunna],
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WWW Link.
2604
Remote sensing, Image dehazing, Image restoration,
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Ancuti, C.O.[Codruta O.],
Ancuti, C.[Cosmin],
Vasluianu, F.A.[Florin-Alexandru],
Timofte, R.[Radu],
Zhou, H.[Han],
Dong, W.[Wei],
Liu, Y.Y.[Yang-Yi],
Chen, J.[Jun],
Liu, Y.Y.[Yang-Yi],
Liu, H.[Huan],
Li, L.Y.[Liang-Yan],
Wu, Z.J.[Zi-Jun],
Chen, J.[Jun],
Dong, Y.[Yubo],
Li, Y.Y.[Yu-Yan],
Qiu, T.[Tian],
He, Y.[Yu],
Lu, Y.H.[Yong-Hong],
Wu, Y.W.[Yin-Wei],
Jiang, Z.X.[Zhen-Xiang],
Liu, S.[Songhua],
Yang, X.Y.[Xing-Yi],
Jing, Y.C.[Yong-Cheng],
Benjdira, B.[Bilel],
Ali, A.M.[Anas M.],
Koubaa, A.[Anis],
Yang, H.H.[Hao-Hsiang],
Chen, I.H.[I-Hsiang],
Chen, W.T.[Wei-Ting],
Huang, Z.K.[Zhi-Kai],
Chen, Y.C.[Yi-Chung],
Hsieh, C.H.[Chia-Hsuan],
Chang, H.E.[Hua-En],
Chiang, Y.C.[Yuan-Chun],
Kuo, S.Y.[Sy-Yen],
Guo, Y.[Yu],
Gao, Y.[Yuan],
Liu, R.W.[Ryan Wen],
Lu, Y.X.[Yu-Xu],
Qu, J.X.[Jing-Xiang],
He, S.F.[Sheng-Feng],
Ren, W.Q.[Wen-Qi],
Hoang, T.[Trung],
Zhang, H.C.[Hai-Chuan],
Yazdani, A.[Amirsaeed],
Monga, V.[Vishal],
Yang, L.[Lehan],
Wu, A.J.H.[Alex Jia-Hao],
Mai, T.C.[Tian-Cheng],
Cong, X.F.[Xiao-Feng],
Yin, X.M.[Xue-Meng],
Yin, X.F.[Xue-Fei],
Emad, H.[Hazim],
Abdallah, A.[Ahmed],
Yasser, Y.[Yahya],
Elshahat, D.[Dalia],
Elbaz, E.[Esraa],
Li, Z.[Zhan],
Kuang, W.Q.[Wen-Qing],
Luo, Z.W.[Zi-Wei],
Gustafsson, F.K.[Fredrik K.],
Zhao, Z.[Zheng],
Sjölund, J.[Jens],
Schön, T.B.[Thomas B.],
Zhang, Z.[Zhao],
Wei, Y.Y.[Yan-Yan],
Wang, J.[Junhu],
Zhao, S.[Suiyi],
Zheng, H.[Huan],
Guo, J.[Jin],
Sun, Y.F.[Yang-Fan],
Liu, T.[Tianli],
Hao, D.J.[De-Jun],
Jiang, K.[Kui],
Sarvaiya, A.[Anjali],
Prajapati, K.[Kalpesh],
Patra, R.[Ratnadeep],
Barik, P.[Pragnesh],
Rathod, C.[Chaitanya],
Upla, K.[Kishor],
Raja, K.[Kiran],
Ramachandra, R.[Raghavendra],
Busch, C.[Christoph],
NTIRE 2023 HR NonHomogeneous Dehazing Challenge Report,
NTIRE23(1808-1825)
IEEE DOI
2309
BibRef
Chen, J.[Jiyou],
Wang, S.C.[Sheng-Chun],
Liu, X.[Xin],
Yang, G.[Gaobo],
RW-HAZE: A Real-World Benchmark Dataset to Evaluate Quantitatively
Dehazing Algorithms,
ICIP22(11-15)
IEEE DOI
2211
Urban areas, Benchmark testing, Cameras, Robustness, image dehazing,
benchmark dataset, performance evaluation
BibRef
Ancuti, C.O.[Codruta O.],
Ancuti, C.[Cosmin],
Vasluianu, F.A.[Florin-Alexandru],
Timofte, R.[Radu],
Fu, M.H.[Ming-Han],
Liu, H.[Huan],
Yu, Y.K.[Yan-Kun],
Chen, J.[Jun],
Wang, K.[Keyan],
Chang, J.[Jerome],
Wang, X.[Xiyao],
Liu, J.[Jing],
Xu, Y.[Yi],
Zhang, X.J.[Xin-Jian],
Zhao, M.[Minyi],
Zhou, S.G.[Shui-Geng],
Chen, T.Y.[Tian-Yi],
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Jiang, W.T.[Wen-Tao],
Gao, C.[Chen],
Liu, S.[Si],
Wang, Y.D.[Yu-Dong],
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Arora, A.[Aditya],
Dudhane, A.[Akshay],
Khan, S.[Salman],
Hayat, M.[Munawar],
Khan, F.S.[Fahad Shahbaz],
Shao, L.[Ling],
Zhang, H.C.[Hai-Chuan],
Guo, T.[Tiantong],
Monga, V.[Vishal],
Yang, W.J.[Wen-Jin],
Lin, J.[Jin],
Luo, X.T.[Xiao-Tong],
Huang, G.[Guowen],
Chen, S.X.[Shu-Xin],
Qu, Y.Y.[Yan-Yun],
Xu, K.[Kele],
Yang, L.[Lehan],
Sun, P.L.[Peng-Liang],
Niu, X.T.[Xue-Tong],
Zheng, J.J.[Jun-Jun],
Ruan, X.T.[Xiao-Tong],
Wang, Y.F.[Yun-Feng],
Yang, J.[Jiang],
Luo, Z.P.[Zhi-Peng],
Wang, S.[Sai],
Xu, Z.Y.[Zhen-Yu],
Cao, X.C.[Xiao-Chun],
Luo, J.[Jun],
Zheng, Z.R.[Zhuo-Ran],
Ren, W.Q.[Wen-Qi],
Wang, T.[Tao],
Chen, Y.Q.[Yi-Qun],
Leng, C.[Cong],
Li, C.H.[Cheng-Hua],
Cheng, J.[Jian],
Sung, C.S.[Chang-Sung],
Chen, J.C.[Jun-Cheng],
Jo, E.[Eunsung],
Sim, J.Y.[Jae-Young],
Geethu, M.M.,
Akhil, K.A.,
Sreeni, K.G.,
Jeena, R.S.,
Zacharias, J.[Joseph],
Manu, C.M.[Chippy M],
Huang, Z.X.[Ze-Xi],
Zhang, B.F.[Bao-Feng],
Zhang, Y.W.[Yi-Wen],
Li, J.D.[Jin-Dong],
Chen, M.[Mianjie],
Xiao, Q.[Quan],
Su, Q.C.[Qing-Chao],
Han, L.H.[Li-Hua],
Huang, Y.T.[Yan-Ting],
Prajapati, K.[Kalpesh],
Chudasama, V.[Vishal],
Patel, H.[Heena],
Sarvaiya, A.[Anjali],
Upla, K.[Kishor],
Raja, K.[Kiran],
Ramachandra, R.[Raghavendra],
Busch, C.[Christoph],
Jing, H.Y.[Hong-Yuan],
Huang, Z.L.[Zi-Long],
Fu, Y.R.[Yi-Ran],
Wu, H.Q.[Hao-Qiang],
Zha, Q.X.[Quan-Xing],
Zhu, Z.W.[Zhi-Wei],
Lv, H.[Hejun],
NTIRE 2021 NonHomogeneous Dehazing Challenge Report,
NTIRE21(627-646)
IEEE DOI
2109
Correlation, Architecture,
Testing
BibRef
Roy, S.D.[Sourav Dey],
Pal, T.[Tannistha],
Bhowmik, M.K.[Mrinal Kanti],
Benchmarking of Natural Scene Image Dataset In Degraded Conditions
for Visibility Enhancement,
ICIP21(1999-2003)
IEEE DOI
2201
Measurement, Deep learning, Statistical analysis, Image processing,
Lighting, Atmosphere, Atmospheric Conditions,
Quantitative Analysis
BibRef
Ancuti, C.O.[Codruta O.],
Ancuti, C.[Cosmin],
Vasluianu, F.A.[Florin-Alexandru],
Timofte, R.[Radu],
Liu, J.[Jing],
Wu, H.Y.[Hai-Yan],
Xie, Y.[Yuan],
Qu, Y.Y.[Yan-Yun],
Ma, L.Z.[Li-Zhuang],
Huang, Z.L.[Zi-Ling],
Deng, Q.[Qili],
Chao, J.C.[Ju-Chin],
Yang, T.S.[Tsung-Shan],
Chen, P.W.[Peng-Wen],
Hsu, P.M.[Po-Min],
Liao, T.Y.[Tzu-Yi],
Sun, C.E.[Chung-En],
Wu, P.Y.[Pei-Yuan],
Do, J.[Jeonghyeok],
Park, J.M.[Jong-Min],
Kim, M.C.[Mun-Churl],
Metwaly, K.[Kareem],
Li, X.L.[Xue-Lu],
Guo, T.T.[Tian-Tong],
Monga, V.[Vishal],
Yu, M.Z.[Ming-Zhao],
Cherukuri, V.[Venkateswararao],
Chuang, S.Y.[Shiue-Yuan],
Lin, T.N.[Tsung-Nan],
Lee, D.[David],
Chang, J.[Jerome],
Wang, Z.H.[Zhan-Han],
Chang, Y.B.[Yu-Bang],
Lin, C.H.[Chang-Hong],
Dong, Y.[Yu],
Zhou, H.Y.[Hong-Yu],
Kong, X.Z.[Xiang-Zhen],
Das, S.D.[Sourya Dipta],
Dutta, S.[Saikat],
Zhao, X.[Xuan],
Ouyang, B.[Bing],
Estrada, D.[Dennis],
Wang, M.Q.[Mei-Qi],
Su, T.Q.[Tian-Qi],
Chen, S.[Siyi],
Sun, B.Y.[Bang-Yong],
Whannou de Dravo, V.[Vincent],
Yu, Z.[Zhe],
Narang, P.[Pratik],
Mehra, A.[Aryan],
Raghunath, N.[Navaneeth],
Mandal, M.[Murari],
NTIRE 2020 Challenge on NonHomogeneous Dehazing,
NTIRE20(2029-2044)
IEEE DOI
2008
Cameras, Image restoration, Image resolution, Benchmark testing,
Image color analysis, Runtime, Sun
BibRef
Ancuti, C.[Cosmin],
Ancuti, C.O.[Codruta O.],
Timofte, R.[Radu],
Van Gool, L.J.,
Zhang, L.,
Yang, M.,
NTIRE 2018 Challenge on Image Dehazing: Methods and Results,
Restoration18(1004-100410)
IEEE DOI
1812
Image color analysis, Cameras, Image restoration, Lighting,
Generators, Meters, Manuals
See also NTIRE 2017 Challenge on Single Image Super-Resolution: Methods and Results.
BibRef
Ancuti, C.O.,
Ancuti, C.,
Timofte, R.,
NH-HAZE: An Image Dehazing Benchmark with Non-Homogeneous Hazy and
Haze-Free Images,
NTIRE20(1798-1805)
IEEE DOI
2008
Image color analysis, Optical imaging, Cameras,
Generators, Atmospheric modeling, Benchmark testing
BibRef
Ancuti, C.O.[Codruta O.],
Ancuti, C.[Cosmin],
Sbert, M.,
Timofte, R.[Radu],
Dense-Haze: A Benchmark for Image Dehazing with Dense-Haze and
Haze-Free Images,
ICIP19(1014-1018)
IEEE DOI
1910
BibRef
Ancuti, C.O.[Codruta O.],
Ancuti, C.[Cosmin],
Timofte, R.[Radu],
de Vleeschouwer, C.[Christophe],
O-HAZE: A Dehazing Benchmark with Real Hazy and Haze-Free Outdoor
Images,
Restoration18(867-8678)
IEEE DOI
1812
BibRef
And: A2, A1, A3, A4:
I-HAZE: A Dehazing Benchmark with Real Hazy and Haze-Free Indoor Images,
ACIVS18(620-631).
Springer DOI
1810
Atmospheric modeling, Image color analysis, Cameras, Lighting,
Measurement, Databases, Optical imaging
BibRef
Zhang, Y.,
Ding, L.,
Sharma, G.,
HazeRD: An outdoor scene dataset and benchmark for single image
dehazing,
ICIP17(3205-3209)
IEEE DOI
1803
Atmospheric modeling, Benchmark testing, Cameras,
Image color analysis, Meteorology, Scattering, Visualization,
depth
BibRef
Chapter on Computational Vision, Regularization, Connectionist, Morphology, Scale-Space, Perceptual Grouping, Wavelets, Color, Sensors, Optical, Laser, Radar continues in
Fog Removal, Defogging .