Vandermonde Factorization of Hankel Matrix for Complex Exponential Signal Recovery-Application in Fast NMR Spectroscopy

Many signals are modeled as a superposition of exponential functions in spectroscopy of chemistry, biology, and medical imaging. This paper studies the problem of recovering exponential signals from a random subset of samples. We exploit the Vandermonde structure of the Hankel matrix formed by the e...

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Veröffentlicht in:IEEE transactions on signal processing 2018-11, Vol.66 (21), p.5520-5533
Hauptverfasser: Ying, Jiaxi, Cai, Jian-Feng, Guo, Di, Tang, Gongguo, Chen, Zhong, Qu, Xiaobo
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Sprache:eng
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Zusammenfassung:Many signals are modeled as a superposition of exponential functions in spectroscopy of chemistry, biology, and medical imaging. This paper studies the problem of recovering exponential signals from a random subset of samples. We exploit the Vandermonde structure of the Hankel matrix formed by the exponential signal and formulate signal recovery as Hankel matrix completion with Vandermonde factorization (HVaF). A numerical algorithm is developed to solve the proposed model and its sequence convergence is analyzed theoretically. Experiments on synthetic data demonstrate that HVaF succeeds over a wider regime than the state-of-the-art nuclear-norm-minimization-based Hankel matrix completion method, while it has a less restriction on frequency separation than the state-of-the-art atomic norm minimization and fast iterative hard thresholding methods. The effectiveness of HVaF is further validated on biological magnetic resonance spectroscopy data.
ISSN:1053-587X
1941-0476
DOI:10.1109/TSP.2018.2869122