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Image Super Resolution in Real World Using Variational Auto Encoder

机译:使用变化自动编码器在现实世界中的超分辨率

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Most of the existing super-resolution methods trained only by simulated datasets are difficult to achieve good performance in real-world scenes. Besides, it is difficult to obtain well-aligned real-world image pairs between high-resolution and low-resolution spaces for training. To tackle this problem, we proposed a novel super-resolution framework based on variational auto encoder. In particular, we firstly utilized a variational auto encoder to map the degraded low-resolution images and the real-world low-resolution images to the same latent space. Meanwhile, the high-quality images were mapped to another latent space by another variational auto encoder. An additional convolutional neural network was used to learn the mapping between the two latent spaces. After that, the information in the mapped latent space was decoded and the high-resolution images were reconstructed by the decoder. We have compared the performance of our proposed method and those of state-of-the-art methods including SRGAN., ESRGAN., and CycleGAN algorithms. The experimental results demonstrate that the proposed method outperforms the above methods in the super-resolved task in real world.
机译:只有模拟数据集训练的大多数现有的超分辨率方法都很难在现实世界场景中实现良好的性能。此外,很难在高分辨率和低分辨率空间之间获得良好的真实世界图像对进行训练。为了解决这个问题,我们提出了一种基于变化自动编码器的新型超分辨率框架。特别地,我们首先利用了变形式自动编码器来将降级的低分辨率图像和实际低分辨率图像映射到同一潜在空间。同时,通过另一种变分式自动编码器将高质量图像映射到另一个潜在的空间。额外的卷积神经网络用于学习两个潜在空间之间的映射。之后,解码映射潜在空间中的信息,并且解码器重建了高分辨率图像。我们已经比较了我们所提出的方法和最先进的方法的表现,包括SRGAN,ESRGAN。和CONSECAN算法。实验结果表明,所提出的方法在现实世界中超分辨任务中的上述方法优于上述方法。

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