A large-scale trust-region approach to the regularization of discrete ill-posed problems

Date
1999
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Abstract

We consider the problem of computing the solution of large-scale discrete ill-posed problems when there is noise in the data. These problems arise in important areas such as seismic inversion, medical imaging and signal processing. We pose the problem as a quadratically constrained least squares problem and develop a method for the solution of such problem. Our method does not require factorization of the coefficient matrix, it has very low storage requirements and handles the high degree of singularities arising in discrete ill-posed problems. We present numerical results on test problems and an application of the method to a practical problem with real data.

Description
Degree
Doctor of Philosophy
Type
Thesis
Keywords
Mathematics, Computer science
Citation

Rojas, Marielba. "A large-scale trust-region approach to the regularization of discrete ill-posed problems." (1999) Diss., Rice University. https://hdl.handle.net/1911/19422.

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