DocumentCode :
1271295
Title :
Solving Fredholm integrals of the first kind with tensor product structure in 2 and 2.5 dimensions
Author :
Venkataramanan, Lalitha ; Song, Yi-Qiao ; Hürlimann, Martin D.
Author_Institution :
Schlumberger-Doll Res., Ridgefield, CT, USA
Volume :
50
Issue :
5
fYear :
2002
fDate :
5/1/2002 12:00:00 AM
Firstpage :
1017
Lastpage :
1026
Abstract :
We present an efficient algorithm to solve a class of two- and 2.5-dimensional (2-D and 2.5-D) Fredholm integrals of the first kind with a tensor product structure and nonnegativity constraint on the estimated parameters of interest in an optimization framework. A zeroth-order regularization functional is used to incorporate a priori information about the smoothness of the parameters into the problem formulation. We adapt the Butler-Reeds-Dawson (1981) algorithm to solve this optimization problem in three steps. In the first step, the data are compressed using singular value decomposition (SVD) of the kernels. The tensor-product structure of the kernel is exploited so that the compressed data is typically a thousand fold smaller than the original data. This size reduction is crucial for fast optimization. In the second step, the constrained optimization problem is transformed to an unconstrained optimization problem in the compressed data space. In the third step, a suboptimal value of the smoothing parameter is chosen by the BRD method. Steps 2 and 3 are iterated until convergence of the algorithm. We demonstrate the performance of the algorithm on simulated data
Keywords :
Fredholm integral equations; data compression; inverse problems; optimisation; parameter estimation; singular value decomposition; tensors; 2.5D inversion problems; 2D inversion problems; BRD method; Butler-Reeds-Dawson algorithm; Fredholm integrals solution; SVD; algorithm convergence; compressed data space; constrained optimization problem; data compression; efficient algorithm; nonnegativity constraint; parameter estimation; parameters smoothness; simulated data; singular value decomposition; tensor product structure; tensor-product structure; unconstrained optimization problem; zeroth-order regularization functional; Additive noise; Constraint optimization; Density functional theory; Gaussian noise; Image restoration; Kernel; Magnetic field measurement; Nuclear magnetic resonance; Random variables; Tensile stress;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/78.995059
Filename :
995059
Link To Document :
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