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Comparative analysis of exemplar based image inpainting techniques

机译:基于示例性图像修复技术的比较分析

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摘要

Inpainting has been an attractive and useful art in this fast growing era of digital image processing. Its applications in numerous fields such as restoration, object removal, superimposed text removal, red-eye removal etc. has made an impression on researchers to evolve generation of inpainting methods. After introduction of exemplar-based algorithm, several variations have been made in order to improve quality of inpainting region containing structure and texture information. Since inpainting starts from the border of the structure and propagates inward, selection of appropriate points on the structure becomes a very important criterion. Data term is responsible for extracting the structures in an image. With overview of exemplar algorithm, few variations in gradient based data terms are presented. Moreover, a data term based on sparsity of the image structure can also be an area of research. Evaluation of all these techniques is done using common analytical measures such as Peak Signal to Noise Ratio (PSNR), Similarity Structure Index Measure (SSIM) and Feature Similarity Index Measure (FSIM) in this paper. Besides qualitative comparison, subjective evaluation using Mean Opinion Score (MOS) is also presented.
机译:在这种快速增长的数字图像处理时代,菊粉是一个有吸引力和有用的艺术。它在许多领域的应用,如恢复,对象去除,叠加的文本去除,红眼去除等。对研究人员来说,对研究人员来说是一种令人印象深刻的侵蚀。在引入基于示例性的算法之后,已经进行了若干变化,以提高包含结构和纹理信息的染色区域的质量。由于初始化从结构的边界开始并向内传播,因此在结构上选择适当的点成为一个非常重要的标准。数据项负责在图像中提取结构。随着示例算法的概述,呈现了基于梯度的数据项的几个变化。此外,基于图像结构的稀疏性的数据项也可以是研究领域。使用诸如峰值信号的常见分析措施(PSNR),相似性结构指标度量(SSIM)和特征相似性指数(FSIM),使用诸如峰值信号的常见分析措施进行评估。除了定性比较外,还呈现了使用平均意见评分(MOS)的主观评估。

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