Face deblurring aims to restore a clear face image from a blurred input image with more explicit structure and facial details. However, most conventional image and face deblurring methods focus on the whole generated image resolution without consideration of special face part texture and generally produce unsufficient details. Considering that faces and backgrounds have different distribution information, in this study, we designed an effective face deblurring network based on separable normalization and adaptive denormalization (SNADNet). First, We fine-tuned the face parsing network to obtain an accurate face structure. Then, we divided the face parsing feature into face foreground and background. Moreover, we constructed a new feature adaptive denormalization to regularize fafcial structures as a condition of the auxiliary to generate more harmonious and undistorted face structure. In addition, we proposed a texture extractor and multi-patch discriminator to enhance the generated facial texture information. Experimental results on both CelebA and CelebA-HQ datasets demonstrate that the proposed face deblurring network restores face structure with more facial details and performs favorably against state-of-the-art methods in terms of structured similarity indexing method (SSIM), peak signal-to-noise ratio (PSNR), Frechet inception distance (FID) and L1, and qualitative comparisons.
翻译:面部除尘器旨在从模糊的输入图像中恢复清晰的面部图像,其结构更清晰,面部细节更清晰。然而,大多数传统图像和面部脱色方法侧重于整个生成的图像分辨率,而没有考虑特殊面部部分的纹理,而且通常产生不完全的细节。考虑到面部和背景有不同的分布信息,我们在本研究中设计了一个基于可分的正常化和适应性去正常化的有效面部除色网络(SNADNet)。首先,我们微调了脸面部分色网络,以获得准确的面部结构。然后,我们将脸面部分解特征分为面部和背景。此外,我们建立了一个新的适应性非正统性特征,以规范面部结构结构结构化结构化结构化的面部结构结构结构化结构化结构化结构化结构化系统(FIMSBS ) 和SIS 结构化结构化结构化结构化结构化系统(FIM1 ) 和信号化结构化系统化系统化系统化方法(FIMSBSBS)