Journal of Spectral Imaging (Jun 2021)

1D conditional generative adversarial network for spectrum-to-spectrum translation of simulated chemical reflectance signatures

  • Cara P. Murphy,
  • John Kerekes

DOI
https://doi.org/10.1255/jsi.2021.a2
Journal volume & issue
Vol. 10, no. 1
p. a2

Abstract

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The classification of trace chemical residues through active spectroscopic sensing is challenging due to the lack of physics-based models that can accurately predict spectra. To overcome this challenge, we leveraged the field of domain adaptation to translate data from the simulated to the measured domain for training a classifier. We developed the first 1D conditional generative adversarial network (GAN) to perform spectrum-to-spectrum translation of reflectance signatures. We applied the 1D conditional GAN to a library of simulated spectra and quantified the improvement in classification accuracy on real data using the translated spectra for training the classifier. Using the GAN-translated library, the average classification accuracy increased from 0.622 to 0.723 on real chemical reflectance data, including data from chemicals not included in the GAN training set.

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