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Optica Publishing Group
  • Applied Spectroscopy
  • Vol. 71,
  • Issue 2,
  • pp. 250-257
  • (2017)

Transmission Raman Measurements Using a Spatial Heterodyne Raman Spectrometer (SHRS)

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Abstract

A spatial heterodyne Raman spectrometer (SHRS) was used to measure transmission Raman spectra of highly scattering compounds. Transmission Raman spectral intensities of ibuprofen were only 2.4 times lower in intensity than backscatter Raman spectra. The throughput was about eight times higher than an f/1.8 dispersive spectrometer, and the width of the area viewed was found to be seven to nine times higher, using 50.8 mm and 250 mm focal length collection lenses. However, the signal-to-noise (S/N) ratio was two times lower for the SHRS than the f/1.8 dispersive spectrometer, apparently due to high levels of stray light.

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