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Multi-View Texture Learning for Face Super-Resolution

机译:面部超级分辨率的多视图纹理学习

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In recent years, single face image super-resolution (SR) using deep neural networks have been well developed. However, most of the face images captured by the camera in a real scene are from different views of the same person, and the existing traditional multi-frame image SR requires alignment between images. Due to multi-view face images contain texture information from different views, which can be used as effective prior information, how to use this prior information from multi-views to reconstruct frontal face images is challenging. In order to effectively solve the above problems, we propose a novel face SR network based on multi-view face images, which focus on obtaining more texture information from multi-view face images to help the reconstruction of frontal face images. And in this network, we also propose a texture attention mechanism to transfer high-precision texture compensation information to the frontal face image to obtain better visual effects. We conduct subjective and objective evaluations, and the experimental results show the great potential of using multi-view face images SR. The comparison with other state-of-the-art deep learning SR methods proves that the proposed method has excellent performance.
机译:近年来,使用深神经网络的单一面部图像超分辨率(SR)得到了很好的发展。然而,在真实场景中由相机捕获的大多数面部图像来自同一人的不同视图,并且现有的传统多帧图像SR需要在图像之间对齐。由于多视图面部图像包含来自不同视图的纹理信息,可以用作有效的先前信息,如何使用来自多视图的先前信息来重建正面图像是具有挑战性的。为了有效解决上述问题,我们提出了一种基于多视图面部图像的新面部SR网络,其专注于从多视图面部图像获得更多纹理信息以帮助重建正面图像。在该网络中,我们还提出了一种纹理注意机制来将高精度纹理补偿信息传递到正面图像以获得更好的视觉效果。我们进行主观和客观评估,实验结果表明使用多视图面部图像SR的巨大潜力。与其他最先进的深度学习SR方法的比较证明了该方法具有优异的性能。

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