In this paper, we propose an alternating direction method of multipliers (ADMM)-based optimization algorithm to achieve better undersampling rate for multiple measurement vector (MMV) problem. The core is to introduce the $\ell_{2,0}$-norm sparsity constraint to describe the joint-sparsity of the MMV problem, which is different from the widely used $\ell_{2,1}$-norm constraint in the existing research. In order to illustrate the better performance of $\ell_{2,0}$-norm, first this paper proves the equivalence of the sparsity of the row support set of a matrix and its $\ell_{2,0}$-norm. Afterward, the MMV problem based on $\ell_{2,0}$-norm is proposed. Moreover, building on the Kurdyka-Lojasiewicz property, this paper establishes that the sequence generated by ADMM globally converges to the optimal point of the MMV problem. Finally, the performance of our algorithm and comparison with other algorithms under different conditions is studied by simulated examples.
翻译:本文中,我们提出了一种基于交替方向乘子法(ADMM)的优化算法,以实现更好的多测量向量(MMV)问题的欠采样率。核心是引入$\ell_{2,0}$-范数稀疏性约束,以描述MMV问题的联合稀疏性。这与现有研究中广泛使用的$\ell_{2,1}$-范数约束不同。为了说明$\ell_{2,0}$-范数的更好性能,本文首先证明了矩阵行支持集的稀疏性与其$\ell_{2,0}$-范数的等价性。之后,提出了基于$\ell_{2,0}$-范数的MMV问题。此外,基于Kurdyka-Lojasiewicz性质,本文论证了ADMM生成的序列全局收敛到MMV问题的最优点。最后,模拟实例研究了我们的算法及其在不同条件下与其他算法的比较。