A Review of 1D Convolutional Neural Networks toward Unknown Substance
Identification in Portable Raman Spectrometer
- URL: http://arxiv.org/abs/2006.10575v1
- Date: Thu, 18 Jun 2020 14:28:00 GMT
- Title: A Review of 1D Convolutional Neural Networks toward Unknown Substance
Identification in Portable Raman Spectrometer
- Authors: M. Hamed Mozaffari and Li-Lin Tay
- Abstract summary: Raman spectroscopy is a powerful analytical tool with applications ranging from quality control to cutting edge biomedical research.
They have been adopted widely by first responders and law enforcement agencies for the field analysis of unknown substances.
Field detection and identification of unknown substances with Raman spectroscopy rely heavily on the spectral matching capability of the devices on hand.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Raman spectroscopy is a powerful analytical tool with applications ranging
from quality control to cutting edge biomedical research. One particular area
which has seen tremendous advances in the past decade is the development of
powerful handheld Raman spectrometers. They have been adopted widely by first
responders and law enforcement agencies for the field analysis of unknown
substances. Field detection and identification of unknown substances with Raman
spectroscopy rely heavily on the spectral matching capability of the devices on
hand. Conventional spectral matching algorithms (such as correlation, dot
product, etc.) have been used in identifying unknown Raman spectrum by
comparing the unknown to a large reference database. This is typically achieved
through brute-force summation of pixel-by-pixel differences between the
reference and the unknown spectrum. Conventional algorithms have noticeable
drawbacks. For example, they tend to work well with identifying pure compounds
but less so for mixture compounds. For instance, limited reference spectra
inaccessible databases with a large number of classes relative to the number of
samples have been a setback for the widespread usage of Raman spectroscopy for
field analysis applications. State-of-the-art deep learning methods
(specifically convolutional neural networks CNNs), as an alternative approach,
presents a number of advantages over conventional spectral comparison algorism.
With optimization, they are ideal to be deployed in handheld spectrometers for
field detection of unknown substances. In this study, we present a
comprehensive survey in the use of one-dimensional CNNs for Raman spectrum
identification. Specifically, we highlight the use of this powerful deep
learning technique for handheld Raman spectrometers taking into consideration
the potential limit in power consumption and computation ability of handheld
systems.
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