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A TWO-STEP MIXED INPAINTING METHOD WITH CURVATURE-BASED ANISOTROPY AND SPATIAL ADAPTIVITY

机译:一种两步混合菊作,各向异性的各向异性和空间适应性

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摘要

The image inpainting problem consists of restoring an image from a (possibly noisy) observation, in which data from one or more regions are missing. Several inpainting models to perform this task have been developed, and although some of them perform reasonably well in certain types of images, quite a few issues are yet to be sorted out. For instance, if the image is expected to be smooth, the inpainting can be made with very good results by means of a Bayesian approach and a maximum a posteriori computation [2]. For nonsmooth images, however, such an approach is far from being satisfactory. Even though the introduction of anisotropy by prior smooth gradient inpainting to the latter methodology is known to produce satisfactory results for slim missing regions [2], the quality of the restoration decays as the occluded regions widen. On the other hand, Total Variation (TV) inpainting models based on high order PDE diffusion equations can be used whenever edge restoration is a priority. More recently, the introduction of spatially variant conductivity coefficients on these models, such as in the case of Curvature-Driven Diffusion (CDD) [4], has allowed inpainted images with well defined edges and enhanced object connectivity. The CDD approach, nonetheless, is not quite suitable wherever the image is smooth, as it tends to produce piecewise constant restorations. In this work we present a two-step inpainting process. The first step consists of using a CDD inpainting to build a pilot image from which to infer a-priori structural information on the image gradient. The second step is inpainting the image by minimizing a mixed spatially variant anisotropic functional, whose weight and penalization directions are based upon the aforementioned pilot image. Results are presented along with comparison measures in order to illustrate the performance of this inpainting method.
机译:图像染色问题包括从(可能嘈杂)观察中恢复图像,其中缺少一个或多个区域的数据。已经开发了几种执行此任务的初创模型,虽然它们中的一些人在某些类型的图像中表现相当良好,但尚未解决了很少的问题。例如,如果预期图像是平滑的,则通过贝叶斯方法和最大后验计算的最佳结果可以通过非常好的结果进行染色[2]。然而,对于非表面图像,这种方法远远令人满意。尽管通过先前平滑的梯度染色到后一种方法来引入各向异性,但是对于减少缺失区域的令人满意的结果,因此令人满意的缺失地区的令人满意的结果,作为遮挡区域变宽的恢复衰减的质量。另一方面,只要边缘恢复是优先级,可以使用基于高阶PDE扩散方程的总变化(TV)批量模型。最近,在这些模型上引入空间变体导电系数,例如在曲率驱动的扩散(CDD)[4]的情况下,允许具有良好定义的边缘的染色图像和增强的物体连接。尽管如此,CDD方法不太适合,无论图像平滑,都能产生分段恒定修复。在这项工作中,我们提出了一项两步的修复过程。第一步包括使用CDD修正来构建从该导频图像来推断图像梯度的先验结构信息。通过最小化混合的空间变体各向异性功能来确定第二步骤,其重量和惩罚方向基于前述导频图像。结果与比较措施一起提出,以说明这种菊粉的性能。

著录项

  • 来源
    《Inverse problems and imaging》 |2017年第2期|共16页
  • 作者单位

    Instituto de Investigación en Se?ales Sistemas e Inteligencia Computacional sinc(i) FICH-UNL/CONICET Argentina Ciudad Universitaria CC 217 Ruta Nac. No 168 km 472.4 (3000) Santa Fe Argentina;

    Instituto de Matemática Aplicada del Litoral IMAL CONICET-UNL Centro Científico Tecnológico CONICET Santa Fe Colectora Ruta Nac. 168 km 472 Paraje "El Pozo" 3000 Santa Fe Argentina and Departamento de Matemática Facultad de Ingeniería Química Univer;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 数学;
  • 关键词

    Inpainting; inverse problems; ill-posedness; regularization; anisotropy;

    机译:染色;逆问题;不良;正规化;各向异性;

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