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Greedy subspace pursuit for joint sparse recovery

机译:贪婪的子空间追求联合稀疏恢复

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In the joint sparse recovery, where the objective is to recover a signal matrix X-0 of size n x l or a set Omega of its nonzero row indices from incomplete measurements, subspace-based greedy algorithms improving MUSIC such as subspace-augmented MUSIC and sequential compressive MUSIC have been proposed to improve the reconstruction performance of X-0 and Omega with a computational efficiency even when rank(X-0) = k := vertical bar Omega vertical bar. However, the main limitation of the MUSIC-like methods is that they most likely fail to recover the signal when a partial support estimate of k - rank(X-0) indices for their input is not fully correct. We proposed a computationally efficient algorithm called two-stage iterative method to detect the remained support (T-IDRS), its special version termed by two-stage orthogonal subspace matching pursuit (TSMP), and its variant called TSMP with sparse Bayesian learning (TSML) by exploiting more than the sparsity k to estimate the signal matrix. They improve on the MUSIC-like methods such that these are guaranteed to recover the signal and its support while the existing MUSIC-like methods will fail in the practically significant case of MMV when rank(X-0)/k is sufficiently small. Numerical simulations demonstrate that the proposed schemes have low complexities and most likely outperform other related methods. A condition of the minimum m required for TSMP to recover the signal matrix is derived in the noiseless case to be applicable to a wide class of the sensing matrix. (C) 2018 Elsevier B.V. All rights reserved.
机译:在联合稀疏恢复中,目的是从不完全测量,基于子空间的贪婪算法改善音乐,如子空间增强音乐和顺序压缩等音乐的信号矩阵X-0或其非零行指数的一个非零行索引的集合ω_0。已经提出了音乐,以提高X-0和Omega的重建性能,即使在秩(x-0)& = k:=垂直栏omega垂直栏中,即使在秩(x-0)&l k:=垂直杆垂直栏)。然而,音乐样方法的主要限制是,当它们输入的k - 秩(x-0)指标的部分支持估计没有完全正确时,它们最有可能无法恢复信号。我们提出了一种称为两级迭代方法的计算上有效的算法来检测剩余的支持(T-IDRS),其特殊版本被两阶段正交子空间匹配(TSMP)称为,其变体称为TSMP,具有稀疏的贝叶斯学习(TSML )通过利用少于稀疏性k来估计信号矩阵。他们改进了音乐样方法,使得这些方法可以保证恢复信号及其支持,而当秩(x-0)/ k足够小时,现有的音乐样方法将在实际上显着的MMV的情况下失败。数值模拟表明,所提出的方案具有低复杂性,最有可能优于其他相关方法。 TSMP以恢复信号矩阵所需的最小M的条件是在无噪声的情况下衍生在无噪声的情况下,以适用于广泛的感测矩阵。 (c)2018年elestvier b.v.保留所有权利。

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