Image super-resolution (SR) techniques are used to generate a high-resolution image from a low-resolution image. Until now, deep generative models such as autoregressive models and Generative Adversarial Networks (GANs) have proven to be effective at modelling high-resolution images. VAE-based models have often been criticised for their feeble generative performance, but with new advancements such as VDVAE, there is now strong evidence that deep VAEs have the potential to outperform current state-of-the-art models for high-resolution image generation. In this paper, we introduce VDVAE-SR, a new model that aims to exploit the most recent deep VAE methodologies to improve upon the results of similar models. VDVAE-SR tackles image super-resolution using transfer learning on pretrained VDVAEs. The presented model is competitive with other state-of-the-art models, having comparable results on image quality metrics.
翻译:图像超分辨率(SR)技术被用于从低分辨率图像生成高分辨率图像。 到目前为止,自递减模型和基因反转网络(GANs)等深层基因模型已证明对高分辨率图像建模有效。 以VAE为基础的模型常常因其微弱的基因化性能受到批评,但随着VDVAE等新的进步,现在有确凿证据表明深VAE具有超越当前高分辨率图像生成最新模型的潜力。 在本文中,我们引入了VDVAE-SR,这是一个新模型,旨在利用最新的甚深VAE方法改进类似模型的结果。 VDVAE-SR利用预先培训的VDVAE的转移学习,处理图像超分辨率。 推出的模型与其他最先进的模型具有竞争力,在图像质量指标上具有可比结果。