Abstract
Replacing the ℓ2 data fidelity term of the standard Total Variation (TV) functional with an ℓ1 data fidelity term has been found to offer a number of theoretical and practical benefits. Efficient algorithms for minimizing this ℓ1-TV functional have only recently begun to be developed, the fastest of which exploit graph representations, and are restricted to the denoising problem. We describe an alternative approach that minimizes a generalized TV functional, including both ℓ2-TV and ℓM1 -TV as special cases, and is capable of solving more general inverse problems than denoising (e.g., deconvolution). This algorithm is competitive with the graph-based methods in the denoising case, and is the fastest algorithm of which we are aware for general inverse problems involving a nontrivial forward linear operator. © 2009 IEEE.
Original language | Spanish |
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Pages (from-to) | 322-332 |
Number of pages | 11 |
Journal | IEEE Transactions on Image Processing |
Volume | 18 |
State | Published - 1 Jan 2009 |