使用线条遮罩修复数字线条图的图像

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Yan Zhu, Yasushi Yamaguchi
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引用次数: 0

摘要

由于互联网上的数字图像数据普遍存在质量下降的问题,因此数字图像的修复具有重要的现实意义。最先进的图像修复方法通常采用端对端训练网络。然而,我们认为,用不同的图像对训练出的网络并不是修复线条图的最佳方法,因为线条图有大量的平淡背景。我们提出了一种线图修复框架,它以一个修复神经网络为骨干,分两步处理输入的退化线图。首先,一个拟议的掩码预测网络会预测一个线条掩码,该掩码会指示潜在原始线条图中前景和背景的可能位置。接下来,我们将退化的输入线条图与预测的线条掩码一起输入主干修复网络。主干修复网络的传统 L1 损失被掩码均方误差 (MSE) 损失所取代。我们在两个经典的图像复原任务中测试了我们的框架:实验证明,我们的框架在大多数情况下都能获得更好的定量和视觉效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Image restoration for digital line drawings using line masks

Image restoration for digital line drawings using line masks

The restoration of digital images holds practical significance due to the fact that degradation of digital image data on the internet is common. State-of-the-art image restoration methods usually employ end-to-end trained networks. However, we argue that a network trained with diverse image pairs is not optimal for restoring line drawings which have extensive plain backgrounds. We propose a line-drawing restoration framework which takes a restoration neural network as backbone and processes an input degraded line drawing in two steps. First, a proposed mask-predicting network predicts a line mask which indicates the possible location of foreground and background in the potential original line drawing. Next, we feed the degraded input line drawing together with the predicted line mask into the backbone restoration network. The traditional L1 loss for the backbone restoration network is substituted with a masked Mean Square Error (MSE) loss. We test our framework on two classical image restoration tasks: JPEG restoration and super-resolution, and experiments demonstrate that our framework can achieve better quantitative and visual results in most cases.

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来源期刊
Graphical Models
Graphical Models 工程技术-计算机:软件工程
CiteScore
3.60
自引率
5.90%
发文量
15
审稿时长
47 days
期刊介绍: Graphical Models is recognized internationally as a highly rated, top tier journal and is focused on the creation, geometric processing, animation, and visualization of graphical models and on their applications in engineering, science, culture, and entertainment. GMOD provides its readers with thoroughly reviewed and carefully selected papers that disseminate exciting innovations, that teach rigorous theoretical foundations, that propose robust and efficient solutions, or that describe ambitious systems or applications in a variety of topics. We invite papers in five categories: research (contributions of novel theoretical or practical approaches or solutions), survey (opinionated views of the state-of-the-art and challenges in a specific topic), system (the architecture and implementation details of an innovative architecture for a complete system that supports model/animation design, acquisition, analysis, visualization?), application (description of a novel application of know techniques and evaluation of its impact), or lecture (an elegant and inspiring perspective on previously published results that clarifies them and teaches them in a new way). GMOD offers its authors an accelerated review, feedback from experts in the field, immediate online publication of accepted papers, no restriction on color and length (when justified by the content) in the online version, and a broad promotion of published papers. A prestigious group of editors selected from among the premier international researchers in their fields oversees the review process.
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