4.7 Article

Using Support Vector Regression and Hyperspectral Imaging for the Prediction of Oenological Parameters on Different Vintages and Varieties of Wine Grape Berries

Journal

REMOTE SENSING
Volume 10, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/rs10020312

Keywords

generalization; machine learning; dimensionality reduction; hyperspectral reflectance imaging; sugar content; anthocyanin concentration; pH index; grape berries

Funding

  1. Project I&D Deus ex Machina-Symbiotic technology for societal efficiency gains [NORTE-01-0145-FEDER-000026]
  2. Fundo Europeu de Desenvolvimento Regional (FEDER) under NORTE
  3. FCT-Portuguese Foundation for Science and Technology [PD/BD/128272/2017, PD/00122/2012]
  4. European Investment Funds by FEDER/COMPETE/POCI-Operacional Competitiveness and Internacionalization Programme [POCI-01-0145-FEDER-006958]
  5. FCT [UID/AGR/04033/2013]
  6. NVIDIA Corporation

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The performance of a support vector regression (SVR) model with a Gaussian radial basis kernel to predict anthocyanin concentration, pH index and sugar content in whole grape berries, using spectroscopic measurements obtained in reflectance mode, was evaluated. Each sample contained a small number of whole berries and the spectrum of each sample was collected during ripening using hyperspectral imaging in the range of 380-1028 nm. Touriga Franca (TF) variety samples were collected for the 2012-2015 vintages, and Touriga Nacional (TN) and Tinta Barroca (TB) variety samples were collected for the 2013 vintage. These TF vintages were independently used to train, validate and test the SVR methodology; different combinations of TF vintages were used to train and test each model to assess the performance differences under wider and more variable datasets; the varieties that were not employed in the model training and validation (TB and TN) were used to test the generalization ability of the SVR approach. Each case was tested using an external independent set (with data not included in the model training or validation steps). The best R-2 results obtained with varieties and vintages not employed in the model's training step were 0.89, 0.81 and 0.90, with RMSE values of 35.6 mgL(-1), 0.25 and 3.19 degrees Brix, for anthocyanin concentration, pH index and sugar content, respectively. The present results indicate a good overall performance for all cases, improving the state-of-the-art results for external test sets, and suggesting that a robust model, with a generalization capacity over different varieties and harvest years may be obtainable without further training, which makes this a very competitive approach when compared to the models from other authors, since it makes the problem significantly simpler and more cost-effective.

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