论文标题
建立基于营养和食物组的图像数据库
Towards the Creation of a Nutrition and Food Group Based Image Database
论文作者
论文摘要
食物分类对于分析包括饮食评估中报道的食物的营养物质至关重要。移动和可穿戴传感器的进步,再加上新的基于图像的方法,尤其是基于深度学习的方法,已经显示出巨大的希望,可以提高食品分类的准确性,以评估饮食摄入量。但是,这些方法是渴望数据的,它们的性能在很大程度上依赖于用于培训食品分类模型的可用数据集的数量和质量。现有的食物图像数据集不适用于细粒食品分类和以下营养分析,因为它们缺乏细粒度和透明的基于食品群体的识别,通常由训练有素的营养师提供具有专家领域知识的营养师。在本文中,我们提出了一个框架,以创建一个基于营养和食物组的图像数据库,其中包含视觉和等级食品分类信息,以增强与每种食物营养概况的联系。我们设计了一项协议,用于将美国农业部(USDA)的食品和营养数据库(FNDD)(FNDD)与食品图像数据集联系起来,并实施一种基于Web的注释工具,以有效地部署该协议。所提出的方法用于构建基于营养和食物的食物,包括16,114的食物,包括16,114的食物,以构建我们的食物。 (WWEIA)美国的食品子类别具有1,865 USDA食品代码与营养数据库,即USDA FNDDS营养数据库。
Food classification is critical to the analysis of nutrients comprising foods reported in dietary assessment. Advances in mobile and wearable sensors, combined with new image based methods, particularly deep learning based approaches, have shown great promise to improve the accuracy of food classification to assess dietary intake. However, these approaches are data-hungry and their performances are heavily reliant on the quantity and quality of the available datasets for training the food classification model. Existing food image datasets are not suitable for fine-grained food classification and the following nutrition analysis as they lack fine-grained and transparently derived food group based identification which are often provided by trained dietitians with expert domain knowledge. In this paper, we propose a framework to create a nutrition and food group based image database that contains both visual and hierarchical food categorization information to enhance links to the nutrient profile of each food. We design a protocol for linking food group based food codes in the U.S. Department of Agriculture's (USDA) Food and Nutrient Database for Dietary Studies (FNDDS) to a food image dataset, and implement a web-based annotation tool for efficient deployment of this protocol.Our proposed method is used to build a nutrition and food group based image database including 16,114 food images representing the 74 most frequently consumed What We Eat in America (WWEIA) food sub-categories in the United States with 1,865 USDA food code matched to a nutrient database, the USDA FNDDS nutrient database.