Novel digital-based approach for evaluating wine components’ intake: A deep learning model to determine red wine volume in a glass from single-view images
Miriam Cobo,
Edgard Relaño de la Guía,
Ignacio Heredia,
Fernando Aguilar,
Lara Lloret-Iglesias,
Daniel García,
Silvia Yuste,
Emma Recio-Fernández,
Patricia Pérez-Matute,
M. José Motilva,
M. Victoria Moreno-Arribas,
Begoña Bartolomé
Affiliations
Miriam Cobo
Institute of Physics of Cantabria (IFCA), CSIC - UC, 39005, Santander, Cantabria, Spain
Edgard Relaño de la Guía
Institute of Food Science Research (CIAL), CSIC-UAM, 28049, Madrid, Spain
Ignacio Heredia
Institute of Physics of Cantabria (IFCA), CSIC - UC, 39005, Santander, Cantabria, Spain
Fernando Aguilar
Institute of Physics of Cantabria (IFCA), CSIC - UC, 39005, Santander, Cantabria, Spain
Lara Lloret-Iglesias
Institute of Physics of Cantabria (IFCA), CSIC - UC, 39005, Santander, Cantabria, Spain
Daniel García
Institute of Physics of Cantabria (IFCA), CSIC - UC, 39005, Santander, Cantabria, Spain
Silvia Yuste
Institute of Grapevine and Wine Sciences (ICVV), CSIC-University of La Rioja-Government of La Rioja, 26007, Logroño, La Rioja, Spain
Emma Recio-Fernández
Infectious Diseases, Microbiota and Metabolism Unit, Center for Biomedical Research of La Rioja (CIBIR), CSIC Associated Unit, 26006, Logroño, La Rioja, Spain, USA
Patricia Pérez-Matute
Infectious Diseases, Microbiota and Metabolism Unit, Center for Biomedical Research of La Rioja (CIBIR), CSIC Associated Unit, 26006, Logroño, La Rioja, Spain, USA
M. José Motilva
Institute of Grapevine and Wine Sciences (ICVV), CSIC-University of La Rioja-Government of La Rioja, 26007, Logroño, La Rioja, Spain
M. Victoria Moreno-Arribas
Institute of Food Science Research (CIAL), CSIC-UAM, 28049, Madrid, Spain
Begoña Bartolomé
Institute of Food Science Research (CIAL), CSIC-UAM, 28049, Madrid, Spain; Corresponding author.
Estimation of wine components’ intake (polyphenols, alcohol, etc.) through Food Frequency Questionnaires (FFQs) may be particularly inaccurate. This paper reports the development of a deep learning (DL) method to determine red wine volume from single-view images, along with its application in a consumer study developed via a web service. The DL model demonstrated satisfactory performance not only in a daily lifelike images dataset (mean absolute error = 10 mL), but also in a real images dataset that was generated through the consumer study (mean absolute error = 26 mL). Based on the data reported by the participants in the consumer study (n = 38), average red wine volume in a glass was 114 ± 33 mL, which represents an intake of 137–342 mg of total polyphenols, 11.2 g of alcohol, 0.342 g of sugars, among other components. Therefore, the proposed method constitutes a diet-monitoring tool of substantial utility in the accurate assessment of wine components’ intake.