Deep Cooking: Predicting Relative Food Ingredient Amounts from Images
Li, Jiatong, Guerrero, Ricardo, Pavlovic, Vladimir
In this paper, we study the novel problem of not only predicting ingredients from a food image, but also predicting the relative amounts of the detected ingredients. We propose two prediction-based models using deep learning that output sparse and dense predictions, coupled with important semi-automatic multi-database integrative data pre-processing, to solve the problem. Experiments on a dataset of recipes collected from the Internet show the models generate encouraging experimental results.
Sep-26-2019
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