Compressed sensing and best approximation from unions of subspaces: Beyond dictionaries

Tomer Peleg, R. Gribonval, M. Davies
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引用次数: 9

Abstract

We propose a theoretical study of the conditions guaranteeing that a decoder will obtain an optimal signal recovery from an underdetermined set of linear measurements. This special type of performance guarantee is termed instance optimality and is typically related with certain properties of the dimensionality-reducing matrix M. Our work extends traditional results in sparse recovery, where instance optimality is expressed with respect to the set of sparse vectors, by replacing this set with an arbitrary finite union of subspaces. We show that the suggested instance optimality is equivalent to a generalized null space property of M and discuss possible relations with generalized restricted isometry properties.
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子空间并集的压缩感知和最佳逼近:超越字典
我们提出了一个理论研究的条件,保证解码器将获得最佳的信号恢复从一组欠确定的线性测量。这种特殊类型的性能保证被称为实例最优性,通常与降维矩阵m的某些属性有关。我们的工作扩展了稀疏恢复中的传统结果,其中实例最优性是相对于稀疏向量集表示的,通过用子空间的任意有限并代替该集合。我们证明了所建议的实例最优性等价于M的广义零空间性质,并讨论了与广义限制等距性质的可能关系。
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