Literature DB >> 31682260

Application of machine learning techniques to electron microscopic/spectroscopic image data analysis.

Shunsuke Muto1, Motoki Shiga2,3,4.   

Abstract

The combination of scanning transmission electron microscopy (STEM) with analytical instruments has become one of the most indispensable analytical tools in materials science. A set of microscopic image/spectral intensities collected from many sampling points in a region of interest, in which multiple physical/chemical components may be spatially and spectrally entangled, could be expected to be a rich source of information about a material. To unfold such an entangled image comprising information and spectral features into its individual pure components would necessitate the use of statistical treatment based on informatics and statistics. These computer-aided schemes or techniques are referred to as multivariate curve resolution, blind source separation or hyperspectral image analysis, depending on their application fields, and are classified as a subset of machine learning. In this review, we introduce non-negative matrix factorization, one of these unfolding techniques, to solve a wide variety of problems associated with the analysis of materials, particularly those related to STEM, electron energy-loss spectroscopy and energy-dispersive X-ray spectroscopy. This review, which commences with the description of the basic concept, the advantages and drawbacks of the technique, presents several additional strategies to overcome existing problems and their extensions to more general tensor decomposition schemes for further flexible applications are described.
© The Author(s) 2019. Published by Oxford University Press on behalf of The Japanese Society of Microscopy.

Entities:  

Keywords:  electron energy-loss spectroscopy; hyperspectral image analysis; non-negative matrix factorization; scanning transmission electron microscopy; tensor decomposition

Year:  2020        PMID: 31682260      PMCID: PMC7141894          DOI: 10.1093/jmicro/dfz036

Source DB:  PubMed          Journal:  Microscopy (Oxf)        ISSN: 2050-5698            Impact factor:   1.571


  16 in total

1.  Independent component analysis: a new possibility for analysing series of electron energy loss spectra.

Authors:  Noël Bonnet; Danielle Nuzillard
Journal:  Ultramicroscopy       Date:  2005-03       Impact factor: 2.689

2.  Mapping chemical and bonding information using multivariate analysis of electron energy-loss spectrum images.

Authors:  M Bosman; M Watanabe; D T L Alexander; V J Keast
Journal:  Ultramicroscopy       Date:  2006-07-05       Impact factor: 2.689

3.  EELS elemental mapping with unconventional methods. I. Theoretical basis: image analysis with multivariate statistics and entropy concepts.

Authors:  P Trebbia; N Bonnet
Journal:  Ultramicroscopy       Date:  1990-12       Impact factor: 2.689

4.  Multivariate statistics applications in phase analysis of STEM-EDS spectrum images.

Authors:  Chad M Parish; Luke N Brewer
Journal:  Ultramicroscopy       Date:  2009-10-24       Impact factor: 2.689

5.  Can we use PCA to detect small signals in noisy data?

Authors:  Jakob Spiegelberg; Ján Rusz
Journal:  Ultramicroscopy       Date:  2016-10-18       Impact factor: 2.689

6.  The usage of data compression for the background estimation of electron energy loss spectra.

Authors:  Jakob Spiegelberg; Ján Rusz; Klaus Leifer; Thomas Thersleff
Journal:  Ultramicroscopy       Date:  2017-05-20       Impact factor: 2.689

7.  Statistical consequences of applying a PCA noise filter on EELS spectrum images.

Authors:  Stijn Lichtert; Jo Verbeeck
Journal:  Ultramicroscopy       Date:  2012-10-27       Impact factor: 2.689

8.  Sparse modeling of EELS and EDX spectral imaging data by nonnegative matrix factorization.

Authors:  Motoki Shiga; Kazuyoshi Tatsumi; Shunsuke Muto; Koji Tsuda; Yuta Yamamoto; Toshiyuki Mori; Takayoshi Tanji
Journal:  Ultramicroscopy       Date:  2016-08-06       Impact factor: 2.689

9.  Background-Foreground Modeling Based on Spatiotemporal Sparse Subspace Clustering.

Authors:  Sajid Javed; Arif Mahmood; Thierry Bouwmans
Journal:  IEEE Trans Image Process       Date:  2017-08-29       Impact factor: 10.856

10.  Magnetic measurements with atomic-plane resolution.

Authors:  Ján Rusz; Shunsuke Muto; Jakob Spiegelberg; Roman Adam; Kazuyoshi Tatsumi; Daniel E Bürgler; Peter M Oppeneer; Claus M Schneider
Journal:  Nat Commun       Date:  2016-08-31       Impact factor: 14.919

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  1 in total

Review 1.  Instantaneous Property Prediction and Inverse Design of Plasmonic Nanostructures Using Machine Learning: Current Applications and Future Directions.

Authors:  Xinkai Xu; Dipesh Aggarwal; Karthik Shankar
Journal:  Nanomaterials (Basel)       Date:  2022-02-14       Impact factor: 5.076

  1 in total

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