4.3 Article

FAST DUAL MINIMIZATION OF THE VECTORIAL TOTAL VARIATION NORM AND APPLICATIONS TO COLOR IMAGE PROCESSING

期刊

INVERSE PROBLEMS AND IMAGING
卷 2, 期 4, 页码 455-484

出版社

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/ipi.2008.2.455

关键词

Vector-valued TV norm; dual formation; BV space; image denoising; ROF model; inverse scale space; chromaticity-brightness color representation; image decomposition; image inpainting; image deblurring; wavelet shrinkage; denoising on mainfold

资金

  1. NSF [DMS-0610079]
  2. ONR [N00014-06-0345]

向作者/读者索取更多资源

We propose a regularization algorithm for color/vectorial images which is fast, easy to code and mathematically well-posed. More precisely, the regularization model is based on the dual formulation of the vectorial Total Variation (VTV) norm and it may be regarded as the vectorial extension of the dual approach defined by Chambolle in [13] for gray-scale/scalar images. The proposed model offers several advantages. First, it minimizes the exact VTV norm whereas standard approaches use a regularized norm. Then, the numerical scheme of minimization is straightforward to implement and finally, the number of iterations to reach the solution is low, which gives a fast regularization algorithm. Finally, we maybe more importantly, the proposed VTV minimization scheme can be easily extended to many standard applications. We apply the L-1 vectorial regularization algorithm to the following problems: color inverse scale space, color denoising with the chromaticity-brightness color representation, color image inpainting, color wavelet shrinkage, color image decomposition, color image deblurring, and color denoising on manifolds. Generally speaking, this VTV minimization scheme can be used in problems that required vector field (color, other feature vector) regularization while preserving discontinuities.

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