论文标题

洗牌多通道稀疏信号恢复

Shuffled Multi-Channel Sparse Signal Recovery

论文作者

Koka, Taulant, Tsakiris, Manolis C., Muma, Michael, Haro, Benjamín Béjar

论文摘要

样品及其各自的通道之间的不匹配或目标通常在几个现实世界中出现。例如,自由移动的生物,多目标跟踪或多人接触式生命符号监测的全脑钙成像可能会受到不匹配的样品通道分配的严重影响。为了系统地解决这个基本问题,我们将其作为信号重建问题提出,在这种问题中,我们在样本及其各自的渠道之间失去了对应关系。假设我们对基础信号具有传感矩阵,我们表明该问题等同于结构化的未标记感应问题,并为唯一恢复建立了足够的条件。据我们所知,在文献中尚未考虑重建洗牌多通道信号的采样结果,现有的未标记感应方法不能直接应用。我们将结果扩展到信号在过度典型字典中稀疏表示的情况(即,传感矩阵尚不清楚),并且为重建洗牌稀疏信号的重建提供了足够的条件。我们提出了一种可靠的重建方法,该方法将稀疏信号恢复与两通道情况的鲁棒线性回归相结合。在与全脑钙成像有关的应用中说明了所提出方法的性能和鲁棒性。所提出的方法可以推广为稀疏信号表示以外的其他方法,而在本工作中考虑的方法是在各种现实世界中使用的方法,并具有不精确的测量或渠道分配。

Mismatches between samples and their respective channel or target commonly arise in several real-world applications. For instance, whole-brain calcium imaging of freely moving organisms, multiple-target tracking or multi-person contactless vital sign monitoring may be severely affected by mismatched sample-channel assignments. To systematically address this fundamental problem, we pose it as a signal reconstruction problem where we have lost correspondences between the samples and their respective channels. Assuming that we have a sensing matrix for the underlying signals, we show that the problem is equivalent to a structured unlabeled sensing problem, and establish sufficient conditions for unique recovery. To the best of our knowledge, a sampling result for the reconstruction of shuffled multi-channel signals has not been considered in the literature and existing methods for unlabeled sensing cannot be directly applied. We extend our results to the case where the signals admit a sparse representation in an overcomplete dictionary (i.e., the sensing matrix is not precisely known), and derive sufficient conditions for the reconstruction of shuffled sparse signals. We propose a robust reconstruction method that combines sparse signal recovery with robust linear regression for the two-channel case. The performance and robustness of the proposed approach is illustrated in an application related to whole-brain calcium imaging. The proposed methodology can be generalized to sparse signal representations other than the ones considered in this work to be applied in a variety of real-world problems with imprecise measurement or channel assignment.

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