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Convexity of the ℓ1-norm based sparsity measure with respect to the missing samples as variables

机译:基于ℓ1范数的稀疏性度量的凸性(以缺失样本为变量)

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Sparse signal processing and the reconstruction of missing samples of signals exhibiting sparsity in a transform domain have been emerging research topics during the last decade. In this paper, we present the proof of the sparsity measure convexity, when considering the missing samples as minimization variables. The sparsity measure can be directly exploited in the reconstruction procedures, such as in the recently proposed gradient-based reconstruction algorithm. It makes the proof of sparsity measure convexity with respect to the missing samples as minimization variables especially interesting for signal processing. The minimal value of the sparsity measure corresponds to the set of missing sample values representing the sparsest possible solution, assuming that the reconstruction conditions are met. Convexity, along with recently presented proof of the uniqueness of the acquired solution, makes the gradient-based algorithm with missing samples as variables, a complete approach to the signal reconstruction. If the sparsity measure is convex, then we can guarantee that the solution corresponds to the global minimum of the sparsity measure, since the local minima do not exist in that case.
机译:在过去的十年中,稀疏信号处理和重构在变换域中表现出稀疏性的信号丢失样本的重建一直是新兴的研究主题。在本文中,当将丢失的样本视为最小变量时,我们提供了稀疏度量凸性的证明。稀疏性度量可以在重建过程中直接利用,例如在最近提出的基于梯度的重建算法中。它使稀疏性度量相对于丢失样本的凸度成为最小化变量,这对于信号处理尤其有意义。假设满足重建条件,稀疏度量的最小值对应于代表最稀疏解决方案的一组缺失样本值。凸性以及最近提出的所获取解决方案唯一性的证明,使得以丢失样本为变量的基于梯度的算法成为信号重建的完整方法。如果稀疏度度量是凸的,那么我们可以保证解对应于稀疏度度量的全局最小值,因为在这种情况下不存在局部最小值。

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