Mono/Multi-material Characterization Using Hyperspectral Images and
Multi-Block Non-Negative Matrix Factorization
- URL: http://arxiv.org/abs/2309.12329v1
- Date: Tue, 15 Aug 2023 10:00:53 GMT
- Title: Mono/Multi-material Characterization Using Hyperspectral Images and
Multi-Block Non-Negative Matrix Factorization
- Authors: Mahdiyeh Ghaffari, Gerjen H. Tinnevelt, Marcel C. P. van Eijk,
Stanislav Podchezertsev, Geert J. Postma, Jeroen J. Jansen
- Abstract summary: Multimaterial and monomaterial plastics are widely employed to enhance the functional properties of packaging.
Industry 4.0 has significantly improved materials sorting of plastic packaging in speed and accuracy.
Hyperspectral Imaging (NIRHSI) provides an automated, fast, and accurate material characterization, without sample preparation.
Non negative Matrix Factorization, NMF, is widely used for the chemical resolution of hyperspectral images.
MBNMF with correspondence among different chemical species constraint may be used to evaluate the presence or absence of particular polymer species.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Plastic sorting is a very essential step in waste management, especially due
to the presence of multilayer plastics. These monomaterial and multimaterial
plastics are widely employed to enhance the functional properties of packaging,
combining beneficial properties in thickness, mechanical strength, and heat
tolerance. However, materials containing multiple polymer species need to be
pretreated before they can be recycled as monomaterials and therefore should
not end up in monomaterial streams. Industry 4.0 has significantly improved
materials sorting of plastic packaging in speed and accuracy compared to manual
sorting, specifically through Near Infrared Hyperspectral Imaging (NIRHSI) that
provides an automated, fast, and accurate material characterization, without
sample preparation. Identification of multimaterials with HSI however requires
novel dedicated approaches for chemical pattern recognition. Non negative
Matrix Factorization, NMF, is widely used for the chemical resolution of
hyperspectral images. Chemically relevant model constraints may make it
specifically valuable to identify multilayer plastics through HSI.
Specifically, Multi Block Non Negative Matrix Factorization (MBNMF) with
correspondence among different chemical species constraint may be used to
evaluate the presence or absence of particular polymer species. To translate
the MBNMF model into an evidence based sorting decision, we extended the model
with an F test to distinguish between monomaterial and multimaterial objects.
The benefits of our new approach, MBNMF, were illustrated by the identification
of several plastic waste objects.
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