Compressed sensing over the Grassmann manifold: A unified analytical framework

Weiyu Xu, B. Hassibi
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引用次数: 89

Abstract

It is well known that compressed sensing problems reduce to finding the sparse solutions for large under-determined systems of equations. Although finding the sparse solutions in general may be computationally difficult, starting with the seminal work of [2], it has been shown that linear programming techniques, obtained from an l1-norm relaxation of the original non-convex problem, can provably find the unknown vector in certain instances. In particular, using a certain restricted isometry property, [2] shows that for measurement matrices chosen from a random Gaussian ensemble, l1 optimization can find the correct solution with overwhelming probability even when the support size of the unknown vector is proportional to its dimension. The paper [1] uses results on neighborly polytopes from [6] to give a ldquosharprdquo bound on what this proportionality should be in the Gaussian measurement ensemble. In this paper we shall focus on finding sharp bounds on the recovery of ldquoapproximately sparserdquo signals (also possibly under noisy measurements). While the restricted isometry property can be used to study the recovery of approximately sparse signals (and also in the presence of noisy measurements), the obtained bounds can be quite loose. On the other hand, the neighborly polytopes technique which yields sharp bounds for ideally sparse signals cannot be generalized to approximately sparse signals. In this paper, starting from a necessary and sufficient condition for achieving a certain signal recovery accuracy, using high-dimensional geometry, we give a unified null-space Grassmannian angle-based analytical framework for compressive sensing. This new framework gives sharp quantitative tradeoffs between the signal sparsity and the recovery accuracy of the l1 optimization for approximately sparse signals. As it will turn out, the neighborly polytopes result of [1] for ideally sparse signals can be viewed as a special case of ours. Our result concerns fundamental properties of linear subspaces and so may be of independent mathematical interest.
格拉斯曼流形上的压缩感知:一个统一的分析框架
众所周知,压缩感知问题可以归结为寻找大型欠定方程组的稀疏解。尽管寻找稀疏解通常在计算上可能是困难的,但从[2]的开创性工作开始,已经表明,从原始非凸问题的11范数松弛得到的线性规划技术,可以证明在某些情况下找到未知向量。特别是,利用一定的受限等距特性,[2]表明,对于从随机高斯集合中选择的测量矩阵,即使未知向量的支持大小与其维数成正比,l1优化也能以压倒性的概率找到正确的解。本文[1]利用[6]中关于邻接多面体的结果给出了高斯测量系综中该比例性应该是什么的ldquosharprdquo界。在本文中,我们将重点寻找ldo近似稀疏信号(也可能在噪声测量下)恢复的明确界限。虽然限制等距特性可以用于研究近似稀疏信号的恢复(也可以在存在噪声测量的情况下),但得到的边界可能相当松散。另一方面,邻域多面体技术对理想稀疏信号产生明显界,不能推广到近似稀疏信号。本文从实现一定的信号恢复精度的充分必要条件出发,利用高维几何,给出了一个统一的基于零空间格拉斯曼角的压缩感知分析框架。该框架在信号稀疏性和近似稀疏信号l1优化的恢复精度之间进行了定量权衡。结果表明,对于理想稀疏信号,[1]的邻接多面体结果可以看作是我们的一个特例。我们的结果涉及线性子空间的基本性质,因此可能具有独立的数学意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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