Semi-supervised deep learning framework for milk analysis using NIR spectrometers

Said, Mai; Wahba, Ayman; Khalil D;

Abstract


Deep learning DL models of NIR spectral data outperforms traditional chemometrics algorithms specially when analyzing complicated materials spectra with overlapping bands. The wide spread of portable miniaturized spectrometers allows the collection of larger datasets which is necessary to build robust DL models. However, with the high cost of chemical referencing most of the collected samples are unreferenced (unsupervised). In this paper, a semi-supervised DL algorithm is proposed to provide a robust scalable model across a wider sample space and sensor space. Two cow milk datasets were collected and measured with 14 Neospectra spectrometers. The proposed algorithm is used to predict milk fat content and water adulteration ratio in milk. Results show that with a reduced referenced (supervised) dataset of only 35% of the milk samples and 50% of the spectrometer units augmented with the remaining unsupervised dataset we can predict milk fat content with R2 = 0.95 and RMSE = 0.22 and milk water adulteration with R2 = 0.8 and RMSE = 0.12.


Other data

Title Semi-supervised deep learning framework for milk analysis using NIR spectrometers
Authors Said, Mai; Wahba, Ayman; Khalil D 
Keywords Chemometrics;Deep learning;Milk adulteration;Milk analysis;NIR;Semi-supervised learning
Issue Date 15-Sep-2022
Journal Chemometrics and Intelligent Laboratory Systems 
Volume 228
ISSN 01697439
DOI 10.1016/j.chemolab.2022.104619
Scopus ID 2-s2.0-85135411527

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