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Single-View Food Portion Estimation: Learning Image-to-Energy Mappings Using Generative Adversarial Networks

机译:单视图食物份量估计:使用生成的对抗网络学习图像到能量的映射

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Due to the growing concern of chronic diseases and other health problems related to diet, there is a need to develop accurate methods to estimate an individual's food and energy intake. Measuring accurate dietary intake is an open research problem. In particular, accurate food portion estimation is challenging since the process of food preparation and consumption impose large variations on food shapes and appearances. In this paper, we present a food portion estimation method to estimate food energy (kilocalories) from food images using Generative Adversarial Networks (GAN). We introduce the concept of an “energy distribution” for each food image. To train the GAN, we design a food image dataset based on ground truth food labels and segmentation masks for each food image as well as energy information associated with the food image. Our goal is to learn the mapping of the food image to the food energy. We can then estimate food energy based on the energy distribution. We show that an average energy estimation error rate of 10.89% can be obtained by learning the image-to-energy mapping.
机译:由于人们越来越关注与饮食有关的慢性疾病和其他健康问题,因此有必要开发准确的方法来估算个人的食物和能量摄入。测量准确的饮食摄入量是一个开放的研究问题。特别地,由于食物的制备和消费过程对食物的形状和外观造成很大的变化,因此准确的食物份额估计是具有挑战性的。在本文中,我们提出了一种利用份量对抗网络(GAN)从食物图像估算食物能量(千卡路里)的食物份量估算方法。我们为每个食物图像引入“能量分配”的概念。为了训练GAN,我们基于地面真相食物标签和每个食物图像的分割蒙版以及与食物图像相关联的能量信息来设计食物图像数据集。我们的目标是学习食物图像到食物能量的映射。然后,我们可以根据能量分布估算食物能量。我们表明,通过学习图像到能量的映射,可以获得平均能量估计错误率为10.89 \%。

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