A CROSS-MODAL VARIATIONAL FRAMEWORK FOR FOOD IMAGE ANALYSIS
Thomas Theodoridis, Vassilios Solachidis, Kosmas Dimitropoulos, Petros Daras
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 15:05
Food analysis resides at the core of modern nutrition recommender systems, providing the foundation for a high-level understanding of users' eating habits. This paper focuses on the sub-task of ingredient recognition from food images using a variational framework. The framework consists of two variational encoder-decoder branches, aimed at processing information from different modalities (images and text), as well as a variational mapper branch, which accomplishes the task of aligning the distributions of the individual branches. Experimental results on the Yummly-28K data-set showcase that the proposed framework performs better than similar variational frameworks, while it surpasses current state-of-the-art approaches on the large-scale Recipe1M data-set.