利用立体视觉技术对食物进行三维重建和体积估计

Fotis Konstantakopoulos, Eleni I. Georga, D. Fotiadis
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引用次数: 5

摘要

人们普遍认为,健康的饮食在现代生活方式中起着重要作用,可以预防或减少重要疾病的影响,如肥胖、糖尿病或心血管疾病。技术进步和智能手机的广泛普及使得通过移动健康解决方案监测和记录每天的营养习惯成为可能。移动健康饮食系统在计算食物营养成分方面最困难的任务是估计其体积。在这项研究中,我们提出了一种基于运动智能手机相机结构的体积估计系统,通过双视图三维食物重建。所提出的方法使用立体视觉技术,需要输入两张食物图像,盘子旁边有一张参考卡,以重建食物的3D结构并估计其体积。上述方法的平均绝对百分比误差在4.6 - 11.1%之间。有标记的地中海希腊食品图像数据集(MedGRFood)的系统收集,具有已知的食物重量,允许对建议的方法进行评估。
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3D Reconstruction and Volume Estimation of Food using Stereo Vision Techniques
It is generally accepted that a healthy diet plays an important role in modern lifestyle and can prevent or reduce the effects of important diseases, such as obesity, diabetes or cardiovascular diseases. Technological advancement and the wide spread of smartphones enable the monitoring and recording of nutritional habits on a daily basis, through mHealth solutions. The most difficult task of mHealth dietary systems for calculating the nutritional composition of food is to estimate its volume. In this study, we present a volume estimation system based on structure from motion smartphone camera, through two-view 3D food reconstruction. The proposed methodology uses stereo vision techniques and requires the input of two food images with a reference card next to the plate, to reconstruct the 3D structure of the food and to estimate its volume. The above approach achieves a mean absolute percentage error from 4.6 - 11.1% per food dish. The systematic collection of a labelled Mediterranean Greek Food images dataset, the MedGRFood, with known food weight allows the evaluation of the proposed methodology.
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