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Compressed Sensing for Multidimensional Spectroscopy Experiments
Author(s) -
Jacob N. Sanders,
Semion K. Saikin,
Sarah Mostame,
Xavier Andrade,
Julia R. Widom,
Andrew H. Marcus,
Alán AspuruGuzik
Publication year - 2012
Publication title -
the journal of physical chemistry letters
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.563
H-Index - 203
ISSN - 1948-7185
DOI - 10.1021/jz300988p
Subject(s) - undersampling , compressed sensing , computer science , spectroscopy , data set , data processing , algorithm , resolution (logic) , spectral resolution , dimension (graph theory) , artificial intelligence , mathematics , spectral line , physics , quantum mechanics , astronomy , pure mathematics , operating system
Compressed sensing is a processing method that significantly reduces the number of measurements needed to accurately resolve signals in many fields of science and engineering. We develop a two-dimensional variant of compressed sensing for multidimensional spectroscopy and apply it to experimental data. For the model system of atomic rubidium vapor, we find that compressed sensing provides an order-of-magnitude (about 10-fold) improvement in spectral resolution along each dimension, as compared to a conventional discrete Fourier transform, using the same data set. More attractive is that compressed sensing allows for random undersampling of the experimental data, down to less than 5% of the experimental data set, with essentially no loss in spectral resolution. We believe that by combining powerful resolution with ease of use, compressed sensing can be a powerful tool for the analysis and interpretation of ultrafast spectroscopy data.

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