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用于多维光谱实验的压缩感知

Compressed Sensing for Multidimensional Spectroscopy Experiments.

作者信息

Sanders Jacob N, Saikin Semion K, Mostame Sarah, Andrade Xavier, Widom Julia R, Marcus Andrew H, Aspuru-Guzik Alán

机构信息

†Department of Chemistry and Chemical Biology, Harvard University, Cambridge, Massachusetts 02138, United States.

‡Department of Chemistry, Oregon Center for Optics, Institute of Molecular Biology, University of Oregon, Eugene, Oregon 97403, United States.

出版信息

J Phys Chem Lett. 2012 Sep 20;3(18):2697-702. doi: 10.1021/jz300988p. Epub 2012 Sep 11.

Abstract

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.

摘要

压缩感知是一种处理方法,在许多科学和工程领域中,它能显著减少精确解析信号所需的测量次数。我们开发了一种用于多维光谱学的二维压缩感知变体,并将其应用于实验数据。对于原子铷蒸汽的模型系统,我们发现,与传统离散傅里叶变换相比,使用相同数据集时,压缩感知在每个维度上的光谱分辨率提高了一个数量级(约10倍)。更具吸引力的是,压缩感知允许对实验数据进行随机欠采样,低至实验数据集的5%以下,而光谱分辨率基本没有损失。我们相信,通过将强大的分辨率与易用性相结合,压缩感知可以成为分析和解释超快光谱数据的有力工具。

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