IEEE Rev Biomed Eng. 2024;17:136-152. doi: 10.1109/RBME.2023.3283149. Epub 2024 Jan 12.
The daily healthy diet and balanced intake of essential nutrients play an important role in modern lifestyle. The estimation of a meal's nutrient content is an integral component of significant diseases, such as diabetes, obesity and cardiovascular disease. Lately, there has been an increasing interest towards the development and utilization of smartphone applications with the aim of promoting healthy behaviours. The semi - automatic or automatic, precise and in real-time estimation of the nutrients of daily consumed meals is approached in relevant literature as a computer vision problem using food images which are taken via a user's smartphone. Herein, we present the state-of-the-art on automatic food recognition and food volume estimation methods starting from their basis, i.e., the food image databases. First, by methodically organizing the extracted information from the reviewed studies, this review study enables the comprehensive fair assessment of the methods and techniques applied for segmenting food images, classifying their food content and computing the food volume, associating their results with the characteristics of the used datasets. Second, by unbiasedly reporting the strengths and limitations of these methods and proposing pragmatic solutions to the latter, this review can inspire future directions in the field of dietary assessment systems.
日常健康饮食和均衡摄入必需营养素对现代生活方式起着重要作用。对膳食营养成分的估计是糖尿病、肥胖症和心血管疾病等重大疾病的一个组成部分。最近,人们越来越关注开发和利用智能手机应用程序,以促进健康行为。相关文献中,将通过用户智能手机拍摄的食物图像,采用计算机视觉方法,实现对日常摄入食物的半自动化或自动化、精确和实时的营养估计,这被视为一个问题。在此,我们从基础出发,即食物图像数据库,介绍了从食物图像中自动识别食物和估计食物量的最新方法。首先,通过对综述研究中提取的信息进行系统地组织,本综述研究能够全面、公正地评估用于分割食物图像、分类食物内容和计算食物量的方法和技术,并将其结果与所用数据集的特点联系起来。其次,通过公正地报告这些方法的优缺点,并为后者提出切实可行的解决方案,本综述可以为膳食评估系统领域的未来发展方向提供启示。