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Recovery of sparse 1-D signals from the magnitudes of their Fourier transform

机译:从傅立叶变换幅度恢复稀疏的一维信号

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The problem of signal recovery from the autocorrelation, or equivalently, the magnitudes of the Fourier transform, is of paramount importance in various fields of engineering. In this work, for one-dimensional signals, we give conditions, which when satisfied, allow unique recovery from the autocorrelation with very high probability. In particular, for sparse signals, we develop two non-iterative recovery algorithms. One of them is based on combinatorial analysis, which we prove can recover signals upto sparsity o(n1/3) with very high probability, and the other is developed using a convex optimization based framework, which numerical simulations suggest can recover signals upto sparsity o(n1/2) with very high probability.
机译:在各种工程领域中,从自相关或傅立叶变换的幅度恢复信号的问题至关重要。在这项工作中,对于一维信号,我们给出条件,当条件满足时,该条件允许以很高的概率从自相关中进行唯一恢复。特别是对于稀疏信号,我们开发了两种非迭代恢复算法。其中之一是基于组合分析的,我们证明了它可以非常高的概率恢复稀疏度为o(n 1/3 )的信号,另一种是使用基于凸优化的框架开发的,其数值模拟表明可以以非常高的概率恢复稀疏度为o(n 1/2 )的信号。

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