University of Bristol
In this work, we propose a new Generative Adversarial Network for Compressed Video quality Enhancement (CVEGAN). The CVEGAN generator benefits from the use of a novel Mul2Res block (with multiple levels of residual learning branches), an enhanced residual non-local block (ERNB) and an enhanced convolutional block attention module (ECBAM). The ERNB has also been employed in the discriminator to improve the representational capability. The training strategy has also been re-designed specifically for video compression applications, to employ a relativistic sphere GAN (ReSphereGAN) training methodology together with new perceptual loss functions.
@article{ma2020cvegan, title={CVEGAN: A Perceptually-inspired GAN for Compressed Video Enhancement}, author={Ma, Di and Zhang, Fan and Bull, David R}, journal={arXiv preprint arXiv:2011.09190}, year={2020} }[paper]