CVSep 15, 2023

Personalized Food Image Classification: Benchmark Datasets and New Baseline

arXiv:2309.08744v19 citationsh-index: 17
Originality Incremental advance
AI Analysis

This work addresses the lack of personalized data and methods for food image classification, which is important for automated dietary assessment, but it is incremental as it builds on existing deep learning approaches.

The paper tackles the problem of food image classification for dietary assessment by introducing two benchmark datasets with individualized consumption patterns and proposing a new framework that uses self-supervised learning and temporal features, achieving improved performance on these datasets.

Food image classification is a fundamental step of image-based dietary assessment, enabling automated nutrient analysis from food images. Many current methods employ deep neural networks to train on generic food image datasets that do not reflect the dynamism of real-life food consumption patterns, in which food images appear sequentially over time, reflecting the progression of what an individual consumes. Personalized food classification aims to address this problem by training a deep neural network using food images that reflect the consumption pattern of each individual. However, this problem is under-explored and there is a lack of benchmark datasets with individualized food consumption patterns due to the difficulty in data collection. In this work, we first introduce two benchmark personalized datasets including the Food101-Personal, which is created based on surveys of daily dietary patterns from participants in the real world, and the VFNPersonal, which is developed based on a dietary study. In addition, we propose a new framework for personalized food image classification by leveraging self-supervised learning and temporal image feature information. Our method is evaluated on both benchmark datasets and shows improved performance compared to existing works. The dataset has been made available at: https://skynet.ecn.purdue.edu/~pan161/dataset_personal.html

Foundations

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