Visual Aware Hierarchy Based Food Recognition
Runyu Mao, Jiangpeng He, Zeman Shao, Sri Kalyan Yarlagadda, Fengqing, Zhu

TL;DR
This paper presents a hierarchical food recognition system combining localization and classification with CNNs, utilizing a new dataset and achieving improved accuracy across multiple datasets.
Contribution
The work introduces a novel two-step CNN-based food recognition framework with hierarchical classification and a new food image dataset, VFN.
Findings
Significant improvement in classification accuracy on 4 datasets.
Effective clustering of similar food categories into a hierarchy.
Successful localization of food regions using Faster R-CNN.
Abstract
Food recognition is one of the most important components in image-based dietary assessment. However, due to the different complexity level of food images and inter-class similarity of food categories, it is challenging for an image-based food recognition system to achieve high accuracy for a variety of publicly available datasets. In this work, we propose a new two-step food recognition system that includes food localization and hierarchical food classification using Convolutional Neural Networks (CNNs) as the backbone architecture. The food localization step is based on an implementation of the Faster R-CNN method to identify food regions. In the food classification step, visually similar food categories can be clustered together automatically to generate a hierarchical structure that represents the semantic visual relations among food categories, then a multi-task CNN model is…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network · RoIPool · Region Proposal Network · Convolution · Softmax · Faster R-CNN
