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Journal article

Sequential transfer learning based on hierarchical clustering for improved performance in deep learning based food segmentation

From

Technical University of Denmark1

Green University of Bangladesh2

Research Group for Risk Benefit, National Food Institute, Technical University of Denmark3

National Food Institute, Technical University of Denmark4

Accurately segmenting foods from optical images is a challenging task, yet becoming possible with the help of recent advances in Deep Learning based solutions. Automated identification of food items opens up possibilities of useful applications like nutrition intake monitoring. Given large variations in food choices, Deep Learning based solutions still struggle to generate human level accuracy.

In this work, we propose a novel Sequential Transfer Learning method using Hierarchical Clustering. This novel approach simulates a step by step problem solving framework based on clustering of similar types of foods. The proposed approach provides up to 6% gain in accuracy compared to traditional network training and generated a robust model performing better in challenging unseen cases.

This approach is also tested for segmenting foods in Danish school children meals for dietary intake monitoring as an application.

Language: English
Publisher: Nature Publishing Group UK
Year: 2021
Pages: 813
ISSN: 20452322
Types: Journal article
DOI: 10.1038/s41598-020-79677-1
ORCIDs: 0000-0002-4137-9374 and Ravn-Haren, Gitte

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