Layer Decomposition Learning Based on Gaussian Convolution Model and Residual Deblurring for Inverse Halftoning
Chang-Hwan Son

TL;DR
This paper introduces a novel layer decomposition method based on Gaussian convolution models and structure-aware deblurring for inverse halftoning, improving restoration quality over existing techniques.
Contribution
It proposes a new GCM-based residual network and a structure-aware deblurring network to effectively separate and restore base and detail layers in inverse halftoning.
Findings
Outperforms state-of-the-art methods in image restoration quality.
Effectively restores image structures like lines and texts.
Provides a new framework for residual learning in inverse halftoning.
Abstract
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 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…
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Taxonomy
TopicsColor Science and Applications · Image Enhancement Techniques · Advanced Image Fusion Techniques
MethodsConcatenated Skip Connection · Max Pooling · *Communicated@Fast*How Do I Communicate to Expedia? · U-Net · Convolution
