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Autori principali: Sulaiman, Marwah, Shehabeldin, Zahraa, Fahmy, Israa, Barakat, Mohammed, El-Naggar, Mohammed, Hussein, Dareen, Youssef, Moustafa, Eraqi, Hesham M.
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2311.09178
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author Sulaiman, Marwah
Shehabeldin, Zahraa
Fahmy, Israa
Barakat, Mohammed
El-Naggar, Mohammed
Hussein, Dareen
Youssef, Moustafa
Eraqi, Hesham M.
author_facet Sulaiman, Marwah
Shehabeldin, Zahraa
Fahmy, Israa
Barakat, Mohammed
El-Naggar, Mohammed
Hussein, Dareen
Youssef, Moustafa
Eraqi, Hesham M.
contents Recently, video super resolution (VSR) has become a very impactful task in the area of Computer Vision due to its various applications. In this paper, we propose Recurrent Back-Projection Generative Adversarial Network (RBPGAN) for VSR in an attempt to generate temporally coherent solutions while preserving spatial details. RBPGAN integrates two state-of-the-art models to get the best in both worlds without compromising the accuracy of produced video. The generator of the model is inspired by RBPN system, while the discriminator is inspired by TecoGAN. We also utilize Ping-Pong loss to increase temporal consistency over time. Our contribution together results in a model that outperforms earlier work in terms of temporally consistent details, as we will demonstrate qualitatively and quantitatively using different datasets.
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institution arXiv
publishDate 2023
record_format arxiv
spellingShingle RBPGAN: Recurrent Back-Projection GAN for Video Super Resolution
Sulaiman, Marwah
Shehabeldin, Zahraa
Fahmy, Israa
Barakat, Mohammed
El-Naggar, Mohammed
Hussein, Dareen
Youssef, Moustafa
Eraqi, Hesham M.
Computer Vision and Pattern Recognition
Recently, video super resolution (VSR) has become a very impactful task in the area of Computer Vision due to its various applications. In this paper, we propose Recurrent Back-Projection Generative Adversarial Network (RBPGAN) for VSR in an attempt to generate temporally coherent solutions while preserving spatial details. RBPGAN integrates two state-of-the-art models to get the best in both worlds without compromising the accuracy of produced video. The generator of the model is inspired by RBPN system, while the discriminator is inspired by TecoGAN. We also utilize Ping-Pong loss to increase temporal consistency over time. Our contribution together results in a model that outperforms earlier work in terms of temporally consistent details, as we will demonstrate qualitatively and quantitatively using different datasets.
title RBPGAN: Recurrent Back-Projection GAN for Video Super Resolution
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2311.09178