An auto-parameter denoising method for nuclear magnetic resonance spectroscopy based on low-rank Hankel matrix.
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Xin Wang | Xiaobo Qu | Wenjing Liao | Tianyu Qiu | Jian-Feng Cai | Di Guo | Dongbao Liu | Jian-Feng Cai | X. Qu | D. Guo | Wenjing Liao | Tianyu Qiu | Dongbao Liu | Xin Wang
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