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Attribute Augmented Convolutional Neural Network for Face Hallucination

机译:属性增强卷积神经网络面向幻觉

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Though existing face hallucination methods achieve great performance on the global region evaluation, most of them cannot recover local attributes accurately, especially when super-resolving a very low-resolution face image from 14 × 12 pixels to its 8 × larger one. In this paper, we propose a brand new Attribute Augmented Convolutional Neural Network (AACNN) to assist face hallucination by exploiting facial attributes. The goal is to augment face hallucination, particularly the local regions, with informative attribute description. More specifically, our method fuses the advantages of both image domain and attribute domain, which significantly assists facial attributes recovery. Extensive experiments demonstrate that our proposed method achieves superior visual quality of hallucination on both local region and global region against the state-of-the-art methods. In addition, our AACNN still improves the performance of hallucination adaptively with partial attribute input.
机译:虽然现有的面部幻觉方法在全球区域评估上实现了良好的性能,但大多数都无法准确恢复本地属性,特别是当超级解析到14×12像素的非常低分辨率的面部图像到其8×更大的面部。在本文中,我们提出了一个全新的属性增强卷积神经网络(AACNN),通过利用面部属性来帮助面临幻觉。目标是增强面对幻觉,特别是当地区域,具有信息化的属性描述。更具体地,我们的方法使图像域和属性域的优点定义,这显着帮助面部属性恢复。广泛的实验表明,我们的拟议方法在局域地区和全球地区的幻觉上实现了较强的视觉质量,防止最先进的方法。此外,我们的AACNN仍然可以通过部分属性输入自适应地提高幻觉的性能。

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