Decoding the shift-invariant data: applications for band-excitation scanning probe microscopy *

Liu, Yongtao and Vasudevan, Rama K and Kelley, Kyle K and Kim, Dohyung and Sharma, Yogesh and Ahmadi, Mahshid and Kalinin, Sergei V and Ziatdinov, Maxim (2021) Decoding the shift-invariant data: applications for band-excitation scanning probe microscopy *. Machine Learning: Science and Technology, 2 (4). 045028. ISSN 2632-2153

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Abstract

A shift-invariant variational autoencoder (shift-VAE) is developed as an unsupervised method for the analysis of spectral data in the presence of shifts along the parameter axis, disentangling the physically-relevant shifts from other latent variables. Using synthetic data sets, we show that the shift-VAE latent variables closely match the ground truth parameters. The shift VAE is extended towards the analysis of band-excitation piezoresponse force microscopy data, disentangling the resonance frequency shifts from the peak shape parameters in a model-free unsupervised manner. The extensions of this approach towards denoising of data and model-free dimensionality reduction in imaging and spectroscopic data are further demonstrated. This approach is universal and can also be extended to analysis of x-ray diffraction, photoluminescence, Raman spectra, and other data sets.

Item Type: Article
Subjects: South Asian Library > Multidisciplinary
Depositing User: Unnamed user with email support@southasianlibrary.com
Date Deposited: 11 Jul 2023 04:49
Last Modified: 18 May 2024 08:44
URI: http://journal.repositoryarticle.com/id/eprint/1279

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