2023
DOI: 10.1117/1.oe.62.6.063101
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Enhancing haze removal and super-resolution in real-world images: a cycle generative adversarial network-based approach for synthesizing paired hazy and clear images

Abstract: .Haze significantly impacts various fields, such as autonomous driving, smart cities, and security monitoring. Deep learning has been proven effective in removing haze from images. However, obtaining pixel-aligned hazy and clear paired images in the real world can be challenging. Therefore, synthesized hazed images are often used for training deep networks. These images are typically generated based on parameters such as depth information and atmospheric scattering coefficient. However, this approach may cause… Show more

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(1 citation statement)
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“…Generative adversarial nets (GAN) have several uses, including text-to-picture and image-to-image translation. 66,95,96 It has been suggested to use a U-net architecture 97 for the generator, which directly maps input to output image and aids in restoring signal independence from noise. WaterGAN is a technique that produces an accurate depth map from an underwater image.…”
Section: Attention Mechanisms Incorporating Attention Mechanisms Into...mentioning
confidence: 99%
“…Generative adversarial nets (GAN) have several uses, including text-to-picture and image-to-image translation. 66,95,96 It has been suggested to use a U-net architecture 97 for the generator, which directly maps input to output image and aids in restoring signal independence from noise. WaterGAN is a technique that produces an accurate depth map from an underwater image.…”
Section: Attention Mechanisms Incorporating Attention Mechanisms Into...mentioning
confidence: 99%