Food Chemistry: X (Sep 2019)

Detection and quantification of adulterations in aged wine using RGB digital images combined with multivariate chemometric techniques

  • Carlos Herrero-Latorre,
  • Julia Barciela-García,
  • Sagrario García-Martín,
  • Rosa M. Peña-Crecente

Journal volume & issue
Vol. 3

Abstract

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A method has been developed to authenticate aged high-quality wines and to quantify their potential adulterations through multivariate analysis and regression techniques applied to the obtained RGB digital images. Wines of pure Gran Reserva, Crianza, and Joven Rioja as well as synthetic adulterated Gran Reserva samples were studied. Digital images were obtained by a single and inexpensive lab-made device. Each sample was characterized by means of the 256 channels intensities from the RGB-colorgram. Multivariate image analysis revealed differences among the wine classes, and between genuine-aged and adulterated samples. Partial least squares regression was used to develop a model for estimating the adulteration degree of Gran Reserva wines. The model achieved good prediction (RMSEP = 1.6), appropriate precision (RSD = 2.5%) and suitable LOD (2.3%) to quantify cost-effective adulterations. The present method, due to simplicity and low cost, could provide an appropriate alternative to the traditional chemical authentication methods. Keywords: Aged-wine, Authentication, Digital image, RGB-colorgram, Multivariate analysis