Food Classification and Meal Intake Amount Estimation through Deep Learning

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Abstract

This paper proposes a method to classify food types and to estimate meal intake amounts in pre- and post-meal images through a deep learning object detection network. The food types and the food regions are detected through Mask R-CNN. In order to make both pre- and post-meal images to a same capturing environment, the post-meal image is corrected through a homography transformation based on the meal plate regions in both images. The 3D shape of the food is determined as one of a spherical cap, a cone, and a cuboid depending on the food type. The meal intake amount is estimated as food volume differences between the pre-meal and post-meal images. As results of the simulation, the food classification accuracy and the food region detection accuracy are up to 97.57% and 93.6%, respectively.

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APA

Kim, J. H., Lee, D. S., & Kwon, S. K. (2023). Food Classification and Meal Intake Amount Estimation through Deep Learning. Applied Sciences (Switzerland), 13(9). https://doi.org/10.3390/app13095742

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