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Mixed deep learning and natural language processing method for fake-food image recognition and standardization to help automated dietary assessment.

Simon MezgecTome EftimovTamara BucherBarbara Koroušić Seljak
Published in: Public health nutrition (2018)
The present findings are a step towards automating dietary assessment and food-choice research. The methodology outperforms other approaches in pixel accuracy, and since it is the first automatic solution for recognizing the images of fake foods, the results could be used as a baseline for possible future studies. As the approach enables a semi-automatic description of recognized food items (e.g. with respect to FoodEx2), these can be linked to any food composition database that applies the same classification and description system.
Keyphrases
  • deep learning
  • convolutional neural network
  • artificial intelligence
  • machine learning
  • human health
  • autism spectrum disorder