Hessian schatten-norm regularization for linear inverse problems

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Abstract

We introduce a novel family of invariant, convex, and non-quadratic functionals that we employ to derive regularized solutions of ill-posed linear inverse imaging problems. The proposed regularizers involve the Schatten norms of the Hessian matrix, which are computed at every pixel of the image. They can be viewed as second-order extensions of the popular total-variation (TV) semi-norm since they satisfy the same invariance properties. Meanwhile, by taking advantage of second-order derivatives, they avoid the staircase effect, a common artifact of TV-based reconstructions, and perform well for a wide range of applications. To solve the corresponding optimization problems, we propose an algorithm that is based on a primal-dual formulation. A fundamental ingredient of this algorithm is the projection of matrices onto Schatten norm balls of arbitrary radius. This operation is performed efficiently based on a direct link we provide between vector projections onto $\ellq norm balls and matrix projections onto Schatten norm balls. Finally, we demonstrate the effectiveness of the proposed methods through experimental results on several inverse imaging problems with real and simulated data. © 1992-2012 IEEE.
Original languageEnglish
Article number6403545
Pages (from-to)1873-1888
Number of pages16
JournalIEEE Transactions on Image Processing
Volume22
Issue number5
DOIs
StatePublished - Mar 25 2013

Keywords

  • Eigenvalue optimization
  • Hessian operator
  • image reconstruction
  • matrix projections
  • Schatten norms

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