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The face image super-resolution algorithm based on combined representation learning

机译:基于组合表示学习的面部图像超分辨率算法

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摘要

Face super-resolution reconstruction is the process of predicting high-resolution face images from one or more observed low-resolution face images, which is a typical pathological problem. As a domain-specific super-resolution task, we can use facial priori knowledge to improve the effect of super-resolution. We propose a method of face image super-resolution reconstruction based on combined representation learning method, using deep residual networks and deep neural networks as generators and discriminators, respectively. First, the model uses residual learning and symmetrical cross-layer connection to extract multilevel features. Local residual mapping improves the expressive capability of the network to enhance performance, solves gradient dissipation in network training, and reduces the number of convolution cores in the model through feature reuse. The feature expression of the face image at the high-dimensional visual level is obtained. The visual feature is sent to the decoder through the cross-layer connection structure. The deconvolution layer is used to restore the spatial dimension gradually and repair the details and texture features of the face. Finally, combine the attention block and the residual block reconstruction in the deep residual network to super-resolution face images that are highly similar to high-resolution images and difficult to be discriminated by the discriminator. On this basis, combined representation learning is conducted to obtain numerous realistic results of visual perception. The experimental results on the face datasets can show that the Peak Signal-to-Noise Ratio of the proposed method is improved.
机译:面部超分辨率重建是从一个或多个观察到的低分辨率面部图像预测高分辨率面部图像的过程,这是典型的病理问题。作为一个特定于域的超分辨率任务,我们可以使用面部优先考虑知识来提高超分辨率的效果。我们提出了一种基于组合表示学习方法的面部图像超分辨率重构方法,分别使用深度剩余网络和深神经网络作为发电机和鉴别器。首先,该模型使用剩余学习和对称的交叉层连接来提取多级功能。本地剩余映射提高了网络增强性能的表现力能力,解决了网络培训中的渐变耗散,并通过功能重用减少了模型中的卷积核心数量。获得了在高维视觉水平处的面部图像的特征表达。可视特征通过横梁连接结构发送到解码器。去卷积层用于逐渐恢复空间尺寸并修复面部的细节和纹理特征。最后,将注意力块和剩余块重建结合在深度剩余网络中到超级分辨率的面部图像,其高度相似,并且难以被鉴别器区别歧视。在此基础上,进行了组合的代表学习,以获得视觉感知的许多现实结果。面部数据集上的实验结果可以表明提高了所提出的方法的峰值信噪比。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2021年第20期|30839-30861|共23页
  • 作者单位

    Changsha Univ Sci & Technol Sch Comp & Commun Engn Changsha 410114 Hunan Peoples R China;

    Changsha Univ Sci & Technol Sch Comp & Commun Engn Changsha 410114 Hunan Peoples R China;

    Changsha Univ Sci & Technol Sch Comp & Commun Engn Changsha 410114 Hunan Peoples R China;

    Changsha Univ Sci & Technol Sch Comp & Commun Engn Changsha 410114 Hunan Peoples R China;

    Hunan Inst Sci & Tech Informat Changsha 411105 Hunan Peoples R China;

    Hunan ZOOMLION Intelligent Technology Corp Ltd Dept Elect Prod Changsha 410005 Hunan Peoples R China;

    Hunan ZOOMLION Intelligent Technology Corp Ltd Dept Elect Prod Changsha 410005 Hunan Peoples R China;

    Yangtze Univ Elect & Informat Sch Jingzhou 434023 Peoples R China;

    Hunan Inst Sci & Tech Informat Changsha 411105 Hunan Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Combined representation learning; Face image super-resolution; Image restoration; Attention mechanism; Deep learning;

    机译:结合代表学习;面部图像超分辨率;图像恢复;注意机制;深入学习;

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