【24h】

Color Image Restoration Using Nonlocal Mumford-Shah Regularizers

机译:使用非本地Mumford-Shah常规彩色图像恢复

获取原文

摘要

We introduce several color image restoration algorithms based on the Mumford-Shah model and nonlocal image information. The standard Ambrosio-Tortorelli and Shah models are defined to work in a small local neighborhood, which are sufficient to denoise smooth regions with sharp boundaries. However, textures are not local in nature and require semi-local/non-local information to be denoised efficiently. Inspired from recent work (NL-means of Buades, Coll, Morel and NL-TV of Gilboa, Osher), we extend the standard models of Ambrosio-Tortorelli and Shah approximations to Mumford-Shah functionals to work with nonlocal information, for better restoration of fine structures and textures. We present several applications of the proposed nonlocal MS regularizes in image processing such as color image denoising, color image deblurring in the presence of Gaussian or impulse noise, color image inpainting, and color image super-resolution. In the formulation of nonlocal variational models for the image deblurring with impulse noise, we propose an efficient preprocessing step for the computation of the weight function w. In all the applications, the proposed nonlocal regularizers produce superior results over the local ones, especially in image inpainting with large missing regions. Experimental results and comparisons between the proposed nonlocal methods and the local ones are shown.
机译:基于Mumford-Shah模型和非局部图像信息,我们介绍了几种彩色图像恢复算法。标准的Ambrosio-Tortorelli和Shah模型被定义为在一个小型本地社区工作,这足以以尖锐的边界代替平滑地区。但是,纹理本质上不是本地的,需要有效地衡量半本地/非本地信息。灵感来自最近的工作(Glade,Coll,Coll,Morel和NL-TV的NL-Miles,Osher),我们将Ambrosio-Tortorelli和Shah近似的标准型号扩展到Mumford-Shah功能,以便与非本信息一起使用,以便更好地修复细结构和纹理。我们在高斯或脉冲噪声,彩色图像染色和彩色图像超分辨率存在下,在图像处理中,在图像处理中,在图像处理中的图像处理中规划了几种应用程序,如彩色图像去噪,彩色图像去纹,彩色图像染色和彩色图像超分辨率。在具有脉冲噪声的图像去掩模的非局部变分模型的制定中,我们提出了一种用于计算权重函数W的有效预处理步骤。在所有的应用中,所提出的非局部常规方面会产生优异的局部结果,尤其是与大型缺失区域的图像染色。展示了所提出的非局部方法与局部的实验结果和比较。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号