Subpixel detection of peanut in wheat flour using a matched subspace detector algorithm and near-infrared hyperspectral imaging

The detection of adulterations in food powder products represents a high interest especially when it concerns the health of the consumers. The food industry is concerned by peanut adulteration since it is a major food allergen often used in transformed food products. Near-infrared hyperspectral imag...

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Veröffentlicht in:Talanta (Oxford) 2020-08, Vol.216, p.120993, Article 120993
Hauptverfasser: Laborde, Antoine, Jaillais, Benoît, Roger, Jean-Michel, Metz, Maxime, Jouan-Rimbaud Bouveresse, Delphine, Eveleigh, Luc, Cordella, Christophe
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Sprache:eng
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Zusammenfassung:The detection of adulterations in food powder products represents a high interest especially when it concerns the health of the consumers. The food industry is concerned by peanut adulteration since it is a major food allergen often used in transformed food products. Near-infrared hyperspectral imaging is an emerging technology for food inspection. It was used in this work to detect peanut flour adulteration in wheat flour. The detection of peanut particles was challenging for two reasons: the particle size is smaller than the pixel size leading to impure spectral profiles; peanut and wheat flour exhibit similar spectral signatures and variability. A Matched Subspace Detector (MSD) algorithm was designed to take these difficulties into account and detect peanut adulteration at the pixel scale using the associated spectrum. A set of simulated data was generated to overcome the lack of reference values at the pixel scale and to design appropriate MSD algorithms. The best designs were compared by estimating the detection sensitivity. Defatted peanut flour and wheat flour were mixed in eight different proportions (from 0.02% to 20%) to test the detection performances of the algorithm on real hyperspectral measurements. The number and positions of the detected pixels were investigated to show the relevancy of the results and validate the design of the MSD algorithm. The presented work proved that the use of hyperspectral imaging and a fine-tuned MSD algorithm enables to detect a global adulteration of 0.2% of peanut in wheat flour. [Display omitted] •Measuring powders with hyperspectral imaging leads to mixed pixel spectral signatures.•Analysis of mixed pixels is tackled using hypothesis testing with the linear mixing model.•A matched subspace detection algorithm is used to estimate the presence of peanut in wheat flour for each pixel.•Data simulation is used to estimate the sensitivity of the matched subspace algorithm and optimize its design.
ISSN:0039-9140
1873-3573
DOI:10.1016/j.talanta.2020.120993