4.5 Article

Deep learning-based statistical noise reduction for multidimensional spectral data

Journal

REVIEW OF SCIENTIFIC INSTRUMENTS
Volume 92, Issue 7, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0054920

Keywords

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Funding

  1. Institute for Basic Science in Korea [IBS-R009-G2]

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This study demonstrates a denoising method using deep learning to overcome the time constraint in acquiring multidimensional spectral data, with successful training of a neural network to remove noise while preserving intrinsic information. The method allows similar analysis with significantly reduced acquisition time, applicable to any multidimensional spectral data susceptible to statistical noise.
In spectroscopic experiments, data acquisition in multi-dimensional phase space may require long acquisition time, owing to the large phase space volume to be covered. In such a case, the limited time available for data acquisition can be a serious constraint for experiments in which multidimensional spectral data are acquired. Here, taking angle-resolved photoemission spectroscopy (ARPES) as an example, we demonstrate a denoising method that utilizes deep learning as an intelligent way to overcome the constraint. With readily available ARPES data and random generation of training datasets, we successfully trained the denoising neural network without overfitting. The denoising neural network can remove the noise in the data while preserving its intrinsic information. We show that the denoising neural network allows us to perform a similar level of second-derivative and line shape analysis on data taken with two orders of magnitude less acquisition time. The importance of our method lies in its applicability to any multidimensional spectral data that are susceptible to statistical noise.

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