In this paper we aim to explore the potential of Deep Convolutional Neural Networks (DCNNs) on food image segmentation where semantic segmentation paradigm is used to separate food regions from the non-food regions. Specifically, we are interested in evaluating the performance of an efficient DCNN with respect to variability in illumination conditions that can be found in food images taken in real scenarios. To this end we have designed an experimental setup where the network is trained on images rendered as if they were taken under nine different illuminants. We evaluate the food vs. non-food segmentation performance of the network in terms of standard Intersection over Union (IoU) measure. The results of this experimentation are reported and discussed.

Ciocca, G., Mazzini, D., Schettini, R. (2019). Evaluating CNN-based semantic food segmentation across illuminants. In Computational Color Imaging : 7th International Workshop, CCIW 2019, Chiba, Japan, March 27-29, 2019, Proceedings (pp.247-259). Springer Verlag [10.1007/978-3-030-13940-7_19].

Evaluating CNN-based semantic food segmentation across illuminants

Ciocca, Gianluigi;Mazzini, Davide;Schettini, Raimondo
2019

Abstract

In this paper we aim to explore the potential of Deep Convolutional Neural Networks (DCNNs) on food image segmentation where semantic segmentation paradigm is used to separate food regions from the non-food regions. Specifically, we are interested in evaluating the performance of an efficient DCNN with respect to variability in illumination conditions that can be found in food images taken in real scenarios. To this end we have designed an experimental setup where the network is trained on images rendered as if they were taken under nine different illuminants. We evaluate the food vs. non-food segmentation performance of the network in terms of standard Intersection over Union (IoU) measure. The results of this experimentation are reported and discussed.
paper
Convolutional Neural Network; Dietary monitoring; Food analysis; Illuminants; Semantic segmentation;
Semantic segmentation, Food analysis, Dietary monitoring, Convolutional Neural Network, Illuminants
English
7th Computational Color Imaging Workshop, CCIW 2019
2019
Shoji Tominaga, Raimondo Schettini, Alain Trémeau,Takahiko Horiuchi
Computational Color Imaging : 7th International Workshop, CCIW 2019, Chiba, Japan, March 27-29, 2019, Proceedings
9783030139391
2019
11418
247
259
none
Ciocca, G., Mazzini, D., Schettini, R. (2019). Evaluating CNN-based semantic food segmentation across illuminants. In Computational Color Imaging : 7th International Workshop, CCIW 2019, Chiba, Japan, March 27-29, 2019, Proceedings (pp.247-259). Springer Verlag [10.1007/978-3-030-13940-7_19].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/223830
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