Food image analysis has been one of the most important tasks accomplished for automatic dietary monitoring. In this work, we address semantic segmentation of food images with Deep Learning. Additionally, we explore food and non-food segmentation by getting advantage of supervised learning. Specifically, we have experimented SegNet model on these two food-related computer vision tasks. Experimental results show that followed approach brings appealing results on semantic food segmentation and significantly advances on food and non-food segmentation.
Semantic segmentation of food images for automatic dietary monitoring / S. Aslan, G. Ciocca, R. Schettini - In: 2018 26th Signal Processing and Communications Applications Conference (SIU)[s.l] : IEEE, 2018. - ISBN 9781538615010. - pp. 1-4 (( Intervento presentato al 26. convegno Signal Processing and Communications Applications Conference tenutosi a Izmir nel 2018 [10.1109/SIU.2018.8404824].
Semantic segmentation of food images for automatic dietary monitoring
S. Aslan
Primo
;
2018
Abstract
Food image analysis has been one of the most important tasks accomplished for automatic dietary monitoring. In this work, we address semantic segmentation of food images with Deep Learning. Additionally, we explore food and non-food segmentation by getting advantage of supervised learning. Specifically, we have experimented SegNet model on these two food-related computer vision tasks. Experimental results show that followed approach brings appealing results on semantic food segmentation and significantly advances on food and non-food segmentation.File | Dimensione | Formato | |
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