2022
DOI: 10.3389/fphy.2021.789232
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Polarization-Based Haze Removal Using Self-Supervised Network

Abstract: Atmospheric scattering caused by suspended particles in the air severely degrades the scene radiance. This paper proposes a method to remove haze by using a neural network that combines scene polarization information. The neural network is self-supervised and online globally optimization can be achieved by using the atmospheric transmission model and gradient descent. Therefore, the proposed method does not require any haze-free image as the constraint for neural network training. The proposed approach is far … Show more

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Cited by 12 publications
(5 citation statements)
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“…Intensity information is the most common complement based on the OPI and PPFM 53,[55][56][57]66,70,74,196 . Similarly, the spectrum 86 and phase 71,75 are general additions to the polarization information. In 3D shape reconstruction tasks, there are different complements such as zenith and azimuth angle maps derived from specular and diffuse reflection 64,65 , viewing encoding, encoded AoP 67 , normalized color 80 , and physics-based prior confidence 81 based on different conditions.…”
Section: Discussionmentioning
confidence: 99%
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“…Intensity information is the most common complement based on the OPI and PPFM 53,[55][56][57]66,70,74,196 . Similarly, the spectrum 86 and phase 71,75 are general additions to the polarization information. In 3D shape reconstruction tasks, there are different complements such as zenith and azimuth angle maps derived from specular and diffuse reflection 64,65 , viewing encoding, encoded AoP 67 , normalized color 80 , and physics-based prior confidence 81 based on different conditions.…”
Section: Discussionmentioning
confidence: 99%
“…Furthermore, physical modes are crucial during network training, such as polarimetric descattering models, three-dimensional imaging models, Fresnel equations, Mueller matrix interpretation models, and other traditional polarization models. The preliminary methods are often end-to-end architectures 43,46,47,56,64,66−70 , suggesting that the polarization information is input into the network to generate the desired outputs directly; however, the physical models are gradually guided 46,47,49,71 or integrated into network training 48,72−74 . Furthermore, the physical model and its inverse process can form a self-supervised closed loop to achieve better performance.…”
Section: Trendsmentioning
confidence: 99%
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