基于范例的图像绘制:快速优先级和连贯的最近邻搜索

R. Martínez-Noriega, A. Roumy, G. Blanchard
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引用次数: 50

摘要

基于贪心样例的图像补全算法面临两个主要问题:补全顺序的确定和选取好样例来合成缺失区域。与文献中已知的算法相比,我们提出了一种算法,通过改进线性边缘的保存和减少误差传播来解决这些问题。我们对填充顺序的改进是基于先前由犯罪人定义的优先级术语的组合,这更好地鼓励了线性结构的早期综合。第二个贡献有助于减少错误传播,这要归功于从携带的候选补丁中更好地检测异常值。这是通过一个包含候选补丁的全部信息的新度量来获得的。此外,我们的方案的计算量明显低于本文中用于比较的大多数算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exemplar-based image inpainting: Fast priority and coherent nearest neighbor search
Greedy exemplar-based algorithms for inpainting face two main problems, decision of filling-in order and selection of good exemplars from which the missing region is synthesized. We propose an algorithm that tackle these problems with improvements in the preservation of linear edges, and reduction of error propagation compared to well-known algorithms from the literature. Our improvement in the filling-in order is based on a combination of priority terms, previously defined by Criminisi, that better encourages the early synthesis of linear structures. The second contribution helps reducing the error propagation thanks to a better detection of outliers from the candidate patches carried. This is obtained with a new metric that incorporates the whole information of the candidate patches. Moreover, our proposal has significant lower computational load than most of the algorithms used for comparison in this paper.
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