4.5 Article

A conjugate gradient like method for p-norm minimization in functional spaces

Journal

NUMERISCHE MATHEMATIK
Volume 137, Issue 4, Pages 895-922

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s00211-017-0893-7

Keywords

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Funding

  1. PRIN [2012MTE38N]
  2. GNCS-INdAM
  3. RTRA STAE foundation

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We develop an iterative algorithm to recover the minimum p-norm solution of the functional linear equation where is a continuous linear operator between the two Banach spaces , , and , , with and . The algorithm is conceived within the same framework of the Landweber method for functional linear equations in Banach spaces proposed by Schopfer et al. (Inverse Probl 22:311-329, 2006). Indeed, the algorithm is based on using, at the n-th iteration, a linear combination of the steepest current descent functional and the previous descent functional, where J denotes a duality map of the Banach space . In this regard, the algorithm can be viewed as a generalization of the classical conjugate gradient method on the normal equations in Hilbert spaces. We demonstrate that the proposed iterative algorithm converges strongly to the minimum p-norm solution of the functional linear equation and that it is also a regularization method, by applying the discrepancy principle as stopping rule. According to the geometrical properties of spaces, numerical experiments show that the method is fast, robust in terms of both restoration accuracy and stability, promotes sparsity and reduces the over-smoothness in reconstructing edges and abrupt intensity changes.

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