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ZRDNet: zero-reference image defogging by physics-based decomposition–reconstruction mechanism and perception fusion — Zi-Xin Li (2023) | RDL Network
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ZRDNet: zero-reference image defogging by physics-based decomposition–reconstruction mechanism and perception fusion
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Qinglong Qinglong Han
Swinburne University of Technology
ZRDNet: zero-reference image defogging by physics-based decomposition–reconstruction mechanism and perception fusion
The Visual Computer 40(8): 5357-5374
Article
2023
English
Authors
+1 more
ZL
Zi-Xin Li
YW
Yu‐Long Wang
Qinglong Qinglong Han
Swinburne University Of Technology
Abstract
1 min read
This paper investigates challenging fully unsupervised defogging problems, i.e., how to remove fog by feeding only foggy images in deep neural networks rat
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