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Investigating the Influence of Box-Constraints on the Solution of a Total Variation Model via an Efficient Primal-Dual Method

机译:通过有效的原始对偶方法研究盒约束对总变异模型解的影响

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In this paper, we investigate the usefulness of adding a box-constraint to the minimization of functionals consisting of a data-fidelity term and a total variation regularization term. In particular, we show that in certain applications an additional box-constraint does not effect the solution at all, i.e., the solution is the same whether a box-constraint is used or not. On the contrary, i.e., for applications where a box-constraint may have influence on the solution, we investigate how much it effects the quality of the restoration, especially when the regularization parameter, which weights the importance of the data term and the regularizer, is chosen suitable. In particular, for such applications, we consider the case of a squared L 2 data-fidelity term. For computing a minimizer of the respective box-constrained optimization problems a primal-dual semi-smooth Newton method is presented, which guarantees superlinear convergence.
机译:在本文中,我们研究了将框约束添加到由数据保真度项和总变化正则项组成的功能最小化的有用性。特别是,我们表明在某些应用中,附加的盒约束根本不会影响解决方案,即,无论是否使用盒约束,解决方案都是相同的。相反,例如,对于框约束可能会对解决方案产生影响的应用程序,我们研究它对恢复质量的影响程度,尤其是当正则化参数权衡数据项和正则化器的重要性时,选择合适的。特别是对于此类应用,我们考虑平方L 2数据保真度项的情况。为了计算各盒约束优化问题的最小化器,提出了一种原始对偶半光滑牛顿法,该方法可以保证超线性收敛。

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