Robust Face Super-Resolution via Patch Network of Global Context Prior

Liang Chen, Yi Wu, Zheng Yang, Wen-Kang Jia
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引用次数: 2

Abstract

The face image captured in real-world scene is the vital object in visual tasks due to its importance in person identity confirmation. However, the face structures is inherently missing due to the degradations in the imaging process, leading to the severe interference in the face enhancement and subsequent face recognition procedure. To remove the degradations and recover a recognizable face, we propose a novel global facial context prior as the guidance to face super-resolution problem. The global facial context prior expands the local structure prior, which is represented as the local patches, into global-face range by modeling the whole facial patch positions into network scheme empirically according to position distributions. The local structure in neighbored positions provides better guidance for reconstruction than the local structure itself, especially when the size of local distortion is larger than the local patch size in input image, leading to the fact that the local input image patch unable to give informative details. Therefore, the global facial context prior improves the robustness of algorithm in dealing with large-range uneven image distortion, e.g. the occlusion. The quantitative and qualitative evaluation on public database demonstrates the superiority of our algorithm.
基于全局上下文先验的补丁网络鲁棒人脸超分辨率
在现实场景中捕捉到的人脸图像对人的身份确认具有重要意义,是视觉任务中的重要对象。然而,由于成像过程中的退化,人脸结构固有缺失,导致人脸增强和随后的人脸识别过程受到严重干扰。为了消除退化并恢复可识别的人脸,我们提出了一种新的全局人脸上下文先验作为人脸超分辨率问题的指导。全局面部上下文先验将局部结构先验(以局部斑块表示)扩展到全局面部范围,根据位置分布经验地将整个面部斑块位置建模为网络方案。邻近位置的局部结构比局部结构本身对重建具有更好的指导作用,特别是当局部畸变的大小大于输入图像中的局部补丁大小时,导致局部输入图像补丁无法给出信息细节。因此,全局上下文先验提高了算法在处理大范围不均匀图像畸变(如遮挡)时的鲁棒性。通过对公共数据库的定性和定量评价,证明了算法的优越性。
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