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首页> 外文期刊>IEEE Transactions on Signal Processing >Tight Performance Bounds for Compressed Sensing With Conventional and Group Sparsity
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Tight Performance Bounds for Compressed Sensing With Conventional and Group Sparsity

机译:具有常规稀疏性和组稀疏性的压缩感知的严格性能界限

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摘要

In this paper, we study the problem of recovering a group sparse vector from a small number of linear measurements. In the past, the common approach has been to use various "group sparsity-inducing" norms such as the Group LASSO norm for this purpose. By using the theory of convex relaxations, we show that it is also possible to use l(1)-norm minimization for group sparse recovery. We introduce a new concept called group robust null space property (GRNSP), and show that, under suitable conditions, a group version of the restricted isometry property (GRIP) implies the GRNSP, and thus leads to group sparse recovery. When all groups are of equal size, our bounds are sometimes less conservative than known bounds. Moreover, our results apply even to situations where the groups have different sizes. When specialized to conventional sparsity, our bounds reduce to one of the well-known "best possible" conditions for sparse recovery. This relationship between GRNSP and GRIP is new even for conventional sparsity, and substantially streamlines the proofs of some known results. Using this relationship, we derive bounds on the l(p)-norm of the residual error vector for all p is an element of [1, 2], and not just when p = 2. When the measurement matrix consists of random samples of a sub-Gaussian random variable, we present bounds on the number of measurements, which are sometimes less conservative than currently known bounds.
机译:在本文中,我们研究了从少量线性测量中恢复组稀疏向量的问题。过去,通常的方法是为此目的使用各种“导致组稀疏性”的规范,例如LASSO组规范。通过使用凸松弛理论,我们表明也可以将l(1)-范数最小化用于组稀疏恢复。我们引入了一个称为组鲁棒零空间属性(GRNSP)的新概念,并表明在适当的条件下,受限等距属性(GRIP)的组版本暗示了GRNSP,因此导致组稀疏恢复。当所有组的大小相等时,我们的边界有时不如已知边界保守。此外,我们的结果甚至适用于群体规模不同的情况。当专门用于常规稀疏性时,我们的界限会减少到稀疏恢复的众所周知的“最佳可能”条件之一。即使对于常规稀疏性,GRNSP和GRIP之间的这种关系也是新的,并且大大简化了一些已知结果的证明。利用这种关系,我们得出所有p都是[1,2]的元素的残差误差向量的l(p)范数的界,而不仅仅是在p = 2时。作为次高斯随机变量,我们给出了测量次数的界限,有时这些界限不如当前已知的界限保守。

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