Gan-Based Video Super-Resolution With Direct Regularized Inversion Of The Low-Resolution Formationmodel

international conference on image processing(2019)

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摘要
While high and ultra high definition displays are becoming popular, most of the available content has been acquired at much lower resolutions. In this workwe propose to pseudoinvert with regularization the image formation model using GANs and perceptual losses. Our model, which does not require the use of motion compensation, utilizes explicitly the low resolution image formation model and additionally introduces two feature losses which are used to obtain perceptually improved high resolution images. The experimental validation shows that our approach outperforms current video super resolution learning based models.
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关键词
Video, Super-resolution, Convolutional Neuronal Networks, Generative Adversarial Networks, Perceptual Loss Functions
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