4.5 Article

Hyperspectral Imaging to Characterize Table Grapes

Journal

CHEMOSENSORS
Volume 9, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/chemosensors9040071

Keywords

hyperspectral imaging; phenolics; anthocyanin; table grapes; total soluble solids; PLS; MLR; prediction; model

Funding

  1. French Region Pays de la Loire, Angers Loire Metropole
  2. European Regional Development Fund

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This study successfully established prediction models for sugar, total flavonoid, and total anthocyanin contents in table grapes using hyperspectral imaging technology, providing a new method for characterizing grape quality. Optimized wavelength selection and pre-treatment methods play important roles in the prediction models.
Table grape quality is of importance for consumers and thus for producers. Its objective quality is usually determined by destructive methods mainly based on sugar content. This study proposed to evaluate the possibility of hyperspectral imaging to characterize table grapes quality through its sugar (TSS), total flavonoid (TF), and total anthocyanin (TA) contents. Different data pre-treatments (WD, SNV, and 1st and 2nd derivative) and different methods were tested to get the best prediction models: PLS with full spectra and then Multiple Linear Regression (MLR) were realized after selecting the optimal wavelengths thanks to the regression coefficients (beta-coefficients) and the Variable Importance in Projection (VIP) scores. All models were good at showing that hyperspectral imaging is a relevant method to predict sugar, total flavonoid, and total anthocyanin contents. The best predictions were obtained from optimal wavelength selection based on beta-coefficients for TSS and from VIPs optimal wavelength windows using SNV pre-treatment for total flavonoid and total anthocyanin content. Thus, good prediction models were proposed in order to characterize grapes while reducing the data sets and limit the data storage to enable an industrial use.

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