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Second-order Cone Programming Methods for Total Variation-Based Image Restoration
2005
SIAM Journal on Scientific Computing
In this paper we present optimization algorithms for image restoration based on the total variation (TV) minimization framework of L. Rudin, S. Osher and E. Fatemi (ROF). Our approach formulates TV minimization as a second-order cone program which is then solved by interior-point algorithms that are efficient both in practice (using nested dissection and domain decomposition) and in theory (i.e., they obtain solutions in polynomial time). In addition to the original ROF minimization model, we
doi:10.1137/040608982
fatcat:lc6qadrccnfhjg7cjvdw3xv74q