NV center based nano-NMR enhanced by deep learning
Wissenschaftlicher Artikel
Authors
Aharon, Nati
Rotem, Amit
McGuinness, Liam P.
Jelezko, Fedor
Retzker, Alex
Faculties
Fakultät für NaturwissenschaftenInstitutions
Institut für QuantenoptikExternal cooperations
Hebrew University of JerusalemPublished in
Scientific Reports ; 9 (2019). - Art.-Nr. 17802. - eISSN 2045-2322
Link to original publication
https://dx.doi.org/10.1038/s41598-019-54119-9Peer review
ja
Document version
publishedVersion
Abstract
The growing field of nano nuclear magnetic resonance (nano-NMR) seeks to estimate spectra or
discriminate between spectra of minuscule amounts of complex molecules. While this field holds great
promise, nano-NMR experiments suffer from detrimental inherent noise. This strong noise masks to the
weak signal and results in a very low signal-to-noise ratio. Moreover, the noise model is usually complex
and unknown, which renders the data processing of the measurement results very complicated. Hence,
spectra discrimination is hard to achieve and in particular, it is difficult to reach the optimal discrimination.
In this work we present strong indications that this difficulty can be overcome by deep learning (DL)
algorithms. The DL algorithms can mitigate the adversarial effects of the noise efficiently by effectively
learning the noise model. We show that in the case of frequency discrimination DL algorithms reach
the optimal discrimination without having any pre-knowledge of the physical model. Moreover, the DL
discrimination scheme outperform Bayesian methods when verified on noisy experimental data obtained
by a single Nitrogen-Vacancy (NV) center. In the case of frequency resolution we show that this approach
outperforms Bayesian methods even when the latter have full pre-knowledge of the noise model and
the former has none. These DL algorithms also emerge as much more efficient in terms of computational
resources and run times. Since in many real-world scenarios the noise is complex and difficult to model, we
argue that DL is likely to become a dominant tool in the field.
Funding information
BMBF
WW Stiftung
Baden Württemberg Stiftung
WW Stiftung
Baden Württemberg Stiftung
EU Project
ASTERIQS / Advancing Science and TEchnology thRough dIamond Quantum Sensing / EC / H2020 / 820394
QRES / EC / H2020 / 770929
HYPERDIAMOND / The Diamond Revolution in Hyperpolarized MR Imaging - Novel Platform and Nanoparticle Targeted Probe / EC / H2020 / 667192
QRES / EC / H2020 / 770929
HYPERDIAMOND / The Diamond Revolution in Hyperpolarized MR Imaging - Novel Platform and Nanoparticle Targeted Probe / EC / H2020 / 667192
Is supplemented by
https://www.nature.com/articles/s41598-019-54119-9#Sec13Subject Headings
Biochemie [GND]Quantenphysik [GND]
Spin [GND]
Physik [GND]
Biochemistry [LCSH]
Biophysics [LCSH]
Quantum theory [LCSH]
Techniques and instrumentation in analytical chemistry [LCSH]
Nuclear magnetic resonance [LCSH]
Spectrum analysis [LCSH]
Physics [LCSH]
Keywords
Applied physics; Atomic and molecular physics; Biological physics; Information theory and computation; Mathematics and computing; Quantum physics; Statistical physics, thermodynamics and nonlinear dynamics; Techniques and instrumentation; PEAK-PICKING; SPECTROSCOPY; DIAMONDDewey Decimal Group
DDC 620 / Engineering & allied operationsMetadata
Show full item recordCitation example
Aharon, Nati et al. (2021): NV center based nano-NMR enhanced by deep learning. Open Access Repositorium der Universität Ulm. http://dx.doi.org/10.18725/OPARU-35236
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