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DCLNet: Dual Closed-loop Networks for face super-resolution

机译:DCLNET:用于面部超分辨率的双闭环网络

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摘要

Recently, deep-learning based face super-resolution methods have succeeded in hallucinating high resolution face images from low-resolution inputs. However, since the given face images have tiny resolution and arbitrary characteristics which need to be reconstructed at high magnification factors, existing methods still suffer from large space of possible mapping functions, resulting in the limited performance in producing sharp textures. In this paper, we propose a novel CNN-based Dual Closed loop Network (DCLNet) to minimize the possible mapping space. To that end, we design two dual learning networks to form the dual closed-loop structure with a primary face super-resolution network, which can provide the primary branch with additional prior constraint to guide the essential facial features restoring. Our work represents the first attempt to introduce multiple dual learning networks into face super-resolution model to constrain the possible mapping space. In addition, a progressive facial prior estimation framework and a new prior-guided feature enhancement module are presented to integrate the facial prior knowledge and guide the face image super-resolution. By generating multiple facial components maps for the activation of essential facial parts, our enhancement module can address the difficulty in learning and integrating strong priors into a face super-resolution model. In this way, the collaboration between the face super-resolution and alignment processes can be enhanced with effect. Extensive experiments are implemented on CelebA and Helen dataset, showing that our proposed method can provide state-of-the-art or even better performance in both quantitative and qualitative measurements. (C) 2021 Elsevier B.V. All rights reserved.
机译:最近,基于深度学习的面部超分辨率方法已经成功地从低分辨率输入中实现了幻觉的高分辨率面部图像。然而,由于给定的面部图像具有在高放大因子中需要重建的微小分辨率和任意特征,因此现有的方法仍然存在可能的映射功能的大空间,从而产生了在产生尖锐纹理方面的性能有限。在本文中,我们提出了一种基于新型CNN的双闭环网络(DCLNET),以最小化可能的映射空间。为此,我们设计了两个双重学习网络,以形成双闭环结构,具有主要面部超分辨率网络,该网络可以为主要的分支提供额外的先前约束来引导基本面部特征恢复。我们的工作代表了将多个双学习网络引入面部超分辨率模型的第一次尝试,以限制可能的映射空间。另外,提出了一种渐进式面部估计框架和新的先前引导的特征增强模块,以集成面部现有知识并引导面部图像超分辨率。通过为激活基本面部部件的激活来生成多个面部组件映射,我们的增强模块可以解决学习和将强前置的难度传达到面部超分辨率模型中。以这种方式,可以通过效果来增强面部超分辨率和对准过程之间的协作。广泛的实验在Celeba和Helen DataSet上实施,表明我们所提出的方法可以在定量和定性测量中提供最先进的或更好的性能。 (c)2021 elestvier b.v.保留所有权利。

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