Barcelona Media--Centre d'Innovació, 08018 Barcelona, Spain.
IEEE Trans Image Process. 2010 Oct;19(10):2634-45. doi: 10.1109/TIP.2010.2049240. Epub 2010 Apr 29.
Inpainting is the art of modifying an image in a form that is not detectable by an ordinary observer. There are numerous and very different approaches to tackle the inpainting problem, though as explained in this paper, the most successful algorithms are based upon one or two of the following three basic techniques: copy-and-paste texture synthesis, geometric partial differential equations (PDEs), and coherence among neighboring pixels. We combine these three building blocks in a variational model, and provide a working algorithm for image inpainting trying to approximate the minimum of the proposed energy functional. Our experiments show that the combination of all three terms of the proposed energy works better than taking each term separately, and the results obtained are within the state-of-the-art.
图像修复是一种通过某种形式对图像进行修改,使得普通观察者无法察觉的艺术。有许多不同的方法可以解决图像修复问题,尽管正如本文所解释的,最成功的算法是基于以下三种基本技术之一或两种:复制-粘贴纹理合成、几何偏微分方程 (PDE) 和相邻像素之间的一致性。我们将这三个构建块组合在一个变分模型中,并提供了一种用于图像修复的工作算法,该算法试图近似于所提出的能量函数的最小值。我们的实验表明,所提出的能量的所有三个项的组合比分别使用每个项的效果更好,并且获得的结果处于最新技术水平。