scholarly journals Gradient-Guided Residual Learning for Inverse Halftoning and Image Expanding

IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 50995-51007 ◽  
Author(s):  
Jin Yuan ◽  
Chao Pan ◽  
Yan Zheng ◽  
Xianyi Zhu ◽  
Zheng Qin ◽  
...  
2021 ◽  
Vol 11 (15) ◽  
pp. 7006
Author(s):  
Chang-Hwan Son

Layer decomposition to separate an input image into base and detail layers has been steadily used for image restoration. Existing residual networks based on an additive model require residual layers with a small output range for fast convergence and visual quality improvement. However, in inverse halftoning, homogenous dot patterns hinder a small output range from the residual layers. Therefore, a new layer decomposition network based on the Gaussian convolution model (GCM) and a structure-aware deblurring strategy is presented to achieve residual learning for both the base and detail layers. For the base layer, a new GCM-based residual subnetwork is presented. The GCM utilizes a statistical distribution, in which the image difference between a blurred continuous-tone image and a blurred halftoned image with a Gaussian filter can result in a narrow output range. Subsequently, the GCM-based residual subnetwork uses a Gaussian-filtered halftoned image as the input, and outputs the image difference as a residual, thereby generating the base layer, i.e., the Gaussian-blurred continuous-tone image. For the detail layer, a new structure-aware residual deblurring subnetwork (SARDS) is presented. To remove the Gaussian blurring of the base layer, the SARDS uses the predicted base layer as the input, and outputs the deblurred version. To more effectively restore image structures such as lines and text, a new image structure map predictor is incorporated into the deblurring network to induce structure-adaptive learning. This paper provides a method to realize the residual learning of both the base and detail layers based on the GCM and SARDS. In addition, it is verified that the proposed method surpasses state-of-the-art methods based on U-Net, direct deblurring networks, and progressively residual networks.


Author(s):  
Xuemeng Liu ◽  
Chang Liu ◽  
Yonghui Li ◽  
Branka Vucetic ◽  
Derrick Wing Kwan Ng

2021 ◽  
Author(s):  
Yanying Liang ◽  
Wei Peng ◽  
Zhu-Jun Zheng ◽  
Olli Silvén ◽  
Guoying Zhao

Author(s):  
Maria Ferrara ◽  
Francesco Della Santa ◽  
Matteo Bilardo ◽  
Alessandro De Gregorio ◽  
Antonio Mastropietro ◽  
...  

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