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首页> 外文期刊>The journal of fourier analysis and applications >Phaseless Sampling and Reconstruction of Real-Valued Signals in Shift-Invariant Spaces
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Phaseless Sampling and Reconstruction of Real-Valued Signals in Shift-Invariant Spaces

机译:换档不变空间中真实信号的扫描采样与重构

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摘要

Sampling in shift-invariant spaces is a realistic model for signals with smooth spectrum. In this paper, we consider phaseless sampling and reconstruction of real-valued signals in a high-dimensional shift-invariant space from their magnitude measurements on the whole Euclidean space and from their phaseless samples taken on a discrete set with finite sampling density. The determination of a signal in a shift-invariant space, up to a sign, by its magnitude measurements on the whole Euclidean space has been shown in the literature to be equivalent to its nonseparability. In this paper, we introduce an undirected graph associated with the signal in a shift-invariant space and use connectivity of the graph to characterize nonseparability of the signal. Under the local complement property assumption on a shift-invariant space, we find a discrete set with finite sampling density such that nonseparable signals in the shift-invariant space can be reconstructed in a stable way from their phaseless samples taken on that set. In this paper, we also propose a reconstruction algorithm which provides an approximation to the original signal when its noisy phaseless samples are available only. Finally, numerical simulations are performed to demonstrate the robustness of the proposed algorithm to reconstruct box spline signals from their noisy phaseless samples.
机译:移位不变空间中的采样是具有光滑频谱的信号的实际模型。在本文中,我们考虑从整个欧几里德空间的大小测量和在具有有限采样密度的离散集上拍摄的焦点测量中的高维变速器不变空间中的扫描采样和重建实值信号。在文献中示出了在整个欧几里德空间上的幅度测量的换档空间中的信号中的信号,以相当于其不可透视。在本文中,我们引入了与换档不变空间中的信号相关联的无向图,并使用图形的连接来表征信号的不可透视性。在局部补充财产上的换档不变空间上,我们发现具有有限采样密度的离散集,使得换档不变空间中的不可密定的信号可以以稳定的方式从其识别的方式从该集合上采取的扫描样本重建。在本文中,我们还提出了一种重建算法,当其嘈杂的扰动样本可用时,该重建算法为原始信号提供了近似。最后,执行数值模拟以展示所提出的算法的稳健性来重建盒子禁止释放样本的条形信号。

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