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Lee KJ, Trowbridge AC, Bruce GD, Dwapanyin GO, Dunning KR, Dholakia K, Schartner EP. Learning algorithms for identification of whisky using portable Raman spectroscopy. Curr Res Food Sci 2024; 8:100729. [PMID: 38595930 PMCID: PMC11002798 DOI: 10.1016/j.crfs.2024.100729] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 01/18/2024] [Revised: 03/13/2024] [Accepted: 03/30/2024] [Indexed: 04/11/2024] Open
Abstract
Reliable identification of high-value products such as whisky is vital due to rising issues of brand substitution and quality control in the industry. We have developed a novel framework that can perform whisky analysis directly from raw spectral data with no human intervention by integrating machine learning models with a portable Raman device. We demonstrate that machine learning models can achieve over 99% accuracy in brand or product identification across twenty-eight commercial samples. To demonstrate the flexibility of this approach, we utilized the same algorithms to quantify ethanol concentrations, as well as measuring methanol levels in spiked whisky samples. To demonstrate the potential use of these algorithms in a real-world environment we tested our algorithms on spectral measurements performed through the original whisky bottle. Through the bottle measurements are facilitated by a beam geometry hitherto not applied to whisky brand identification in conjunction with machine learning. Removing the need for decanting greatly enhances the practicality and commercial potential of this technique, enabling its use in detecting counterfeit or adulterated spirits and other high-value liquids. The techniques established in this paper aim to function as a rapid and non-destructive initial screening mechanism for detecting falsified and tampered spirits, complementing more comprehensive and stringent analytical methods.
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Affiliation(s)
- Kwang Jun Lee
- Centre of Light for Life (CLL) and Institute for Photonics and Advanced Sensing (IPAS), The University of Adelaide, Adelaide, 5005, SA, Australia
- School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
- School of Biological Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
| | - Alexander C. Trowbridge
- Centre of Light for Life (CLL) and Institute for Photonics and Advanced Sensing (IPAS), The University of Adelaide, Adelaide, 5005, SA, Australia
- School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
- School of Biological Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
| | - Graham D. Bruce
- SUPA School of Physics and Astronomy, University of St Andrews, St Andrews, KY16 9SS, Fife, United Kingdom
| | - George O. Dwapanyin
- SUPA School of Physics and Astronomy, University of St Andrews, St Andrews, KY16 9SS, Fife, United Kingdom
| | - Kylie R. Dunning
- School of Biological Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
- Robinson Research Institute, School of Biomedicine, The University of Adelaide, Adelaide, 5005, SA, Australia
| | - Kishan Dholakia
- Centre of Light for Life (CLL) and Institute for Photonics and Advanced Sensing (IPAS), The University of Adelaide, Adelaide, 5005, SA, Australia
- SUPA School of Physics and Astronomy, University of St Andrews, St Andrews, KY16 9SS, Fife, United Kingdom
- School of Biological Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
| | - Erik P. Schartner
- Centre of Light for Life (CLL) and Institute for Photonics and Advanced Sensing (IPAS), The University of Adelaide, Adelaide, 5005, SA, Australia
- School of Physics, Chemistry and Earth Sciences, The University of Adelaide, Adelaide, 5005, SA, Australia
- Robinson Research Institute, School of Biomedicine, The University of Adelaide, Adelaide, 5005, SA, Australia
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Affiliation(s)
- David Love
- United States Drug Enforcement Administration, Special Testing and Research Laboratory, USA
| | - Nicole S. Jones
- RTI International, Applied Justice Research Division, Center for Forensic Sciences, 3040 E. Cornwallis Road, Research Triangle Park, NC, 22709-2194, USA
- 70113 Street, N.W., Suite 750, Washington, DC, 20005-3967, USA
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McMillan L, Bruce GD, Dholakia K. Meshless Monte Carlo radiation transfer method for curved geometries using signed distance functions. JOURNAL OF BIOMEDICAL OPTICS 2022; 27:JBO-210394SSRRR. [PMID: 35927789 PMCID: PMC9350858 DOI: 10.1117/1.jbo.27.8.083003] [Citation(s) in RCA: 1] [Impact Index Per Article: 0.3] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Track Full Text] [Subscribe] [Scholar Register] [Received: 12/20/2021] [Accepted: 07/20/2022] [Indexed: 05/18/2023]
Abstract
SIGNIFICANCE Monte Carlo radiation transfer (MCRT) is the gold standard for modeling light transport in turbid media. Typical MCRT models use voxels or meshes to approximate experimental geometry. A voxel-based geometry does not allow for the precise modeling of smooth curved surfaces, such as may be found in biological systems or food and drink packaging. Mesh-based geometry allows arbitrary complex shapes with smooth curved surfaces to be modeled. However, mesh-based models also suffer from issues such as the computational cost of generating meshes and inaccuracies in how meshes handle reflections and refractions. AIM We present our algorithm, which we term signedMCRT (sMCRT), a geometry-based method that uses signed distance functions (SDF) to represent the geometry of the model. SDFs are capable of modeling smooth curved surfaces precisely while also modeling complex geometries. APPROACH We show that using SDFs to represent the problem's geometry is more precise than voxel and mesh-based methods. RESULTS sMCRT is validated against theoretical expressions, and voxel and mesh-based MCRT codes. We show that sMCRT can precisely model arbitrary complex geometries such as microvascular vessel network using SDFs. In comparison with the current state-of-the-art in MCRT methods specifically for curved surfaces, sMCRT is more precise for cases where the geometry can be defined using combinations of shapes. CONCLUSIONS We believe that SDF-based MCRT models are a complementary method to voxel and mesh models in terms of being able to model complex geometries and accurately treat curved surfaces, with a focus on precise simulation of reflections and refractions. sMCRT is publicly available at https://github.com/lewisfish/signedMCRT.
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Affiliation(s)
- Lewis McMillan
- University of St Andrews, SUPA School of Physics and Astronomy, St Andrews, Scotland
- Address all correspondence to Lewis McMillan,
| | - Graham D. Bruce
- University of St Andrews, SUPA School of Physics and Astronomy, St Andrews, Scotland
| | - Kishan Dholakia
- University of St Andrews, SUPA School of Physics and Astronomy, St Andrews, Scotland
- Yonsei University, College of Science, Department of Physics, Seoul, South Korea
- The University of Adelaide, School of Biological Sciences, Adelaide, South Australia, Australia
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