迭代宽带源定位

Coleman DeLude;Rakshith S. Srinivasa;Santhosh Karnik;Christopher Hood;Mark A. Davenport;Justin Romberg
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引用次数: 0

摘要

在本文中,我们考虑从有限的测量窗口定位一组宽带源的问题。在窄带源的情况下,这可以简化为谱线估计问题,其中我们的目标只是从纯正弦曲线的加权混合物中估计有效频率。有大量的现代和古典方法可以有效地解决这个问题。然而,对于各种各样的应用,底层源不是窄带的,并且可以具有可观的带宽。在这项工作中,我们扩展了用于稀疏恢复的经典贪婪算法(例如,正交匹配追踪)来定位宽带源。我们利用基于Slepian子空间联合的宽带信号样本模型,这些模型更适合处理频谱泄漏和动态范围差异。我们表明,通过使用这些模型,我们的自适应算法可以在各种不利的操作场景下成功地定位宽带源。此外,我们还表明,我们的算法优于使用更多标准傅立叶模型的互补方法。我们还表明,只要测量次数在信号隐含自由度的数量级上,我们就可以从压缩测量中进行估计,而保真度损失很小。最后,我们将这些思想深入应用于多传感器阵列的定位问题。
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Iterative Broadband Source Localization
In this paper we consider the problem of localizing a set of broadband sources from a finite window of measurements. In the case of narrowband sources this can be reduced to the problem of spectral line estimation, where our goal is simply to estimate the active frequencies from a weighted mixture of pure sinusoids. There exists a plethora of modern and classical methods that effectively solve this problem. However, for a wide variety of applications the underlying sources are not narrowband and can have an appreciable amount of bandwidth. In this work, we extend classical greedy algorithms for sparse recovery (e.g., orthogonal matching pursuit) to localize broadband sources. We leverage models for samples of broadband signals based on a union of Slepian subspaces, which are more aptly suited for dealing with spectral leakage and dynamic range disparities. We show that by using these models, our adapted algorithms can successfully localize broadband sources under a variety of adverse operating scenarios. Furthermore, we show that our algorithms outperform complementary methods that use more standard Fourier models. We also show that we can perform estimation from compressed measurements with little loss in fidelity as long as the number of measurements are on the order of the signal’s implicit degrees of freedom. We conclude with an in-depth application of these ideas to the problem of localization in multi-sensor arrays.
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