File:Plastic classification via in-line hyperspectral camera analysis and unsupervised machine learning.pdf
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[edit]DescriptionPlastic classification via in-line hyperspectral camera analysis and unsupervised machine learning.pdf |
English: An increase in the quality of recycled plastic is paramount to address the global plastic challenge and applicability of recycled plastics. A potent approach is mechanical plastic sorting but sufficient analytical techniques are needed. This study applies unsupervised machine learning on short wave infrared hyperspectral data to build a model for classification of plastics. The model can successfully distinguish between twelve plastics (PE, PP, PET, PS, PVC, PVDF, POM, PEEK, ABS, PMMA, PC, and PA12) and the utility is further proven by recognizing three unknown samples (PS, PMMA, PC). The experimental setup is constructed similar to an in-line industrial setup, and the machine learning is optimized for minimal data processing. This ensures the industrial relevance and is a stepping-stone to solve the global plastic challenge. |
Date | |
Source | https://www.sciencedirect.com/science/article/pii/S0924203121001247 |
Author | Martin L. Henriksena, Celine B. Karlsena, Pernille Klarskovb, Mogens Hingea |
doi:10.1016/j.vibspec.2021.103329
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current | 00:05, 14 January 2022 | 1,239 × 1,652, 7 pages (1.67 MB) | Koavf (talk | contribs) | Uploaded a work by Martin L. Henriksena, Celine B. Karlsena, Pernille Klarskovb, Mogens Hingea from https://www.sciencedirect.com/science/article/pii/S0924203121001247 with UploadWizard |
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Publisher | Elsevier B.V. |
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Software used | Elsevier |
File change date and time | 07:57, 7 December 2021 |
Date and time of digitizing | 07:55, 7 December 2021 |
Date metadata was last modified | 07:57, 7 December 2021 |
Copyright status | Copyrighted |
Identifier | 10.1016/j.vibspec.2021.103329 |
Conversion program | Acrobat Distiller 8.1.0 (Windows) |
Encrypted | no |
Page size | 595.276 x 793.701 pts |
Version of PDF format | 1.7 |