BabyNutri:基于光谱重建的高性价比婴儿食品常量营养素分析仪

Haiyan Hu, Qianyi Huang, Qian Zhang
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引用次数: 1

摘要

婴幼儿的身体和生理发育需要摄入适量的宏量营养素,对婴儿食品中宏量营养素的估算是一个必不可少的问题。然而,现有的解决方案要么太贵,要么性能差,阻碍了婴儿营养摄入量自动记录的广泛使用。为了缩小这一差距,本文提出了一种具有成本效益的便携式婴儿食品宏量营养素估算系统——BabyNutri。BabyNutri利用一种新的光谱重建算法,从低成本光谱仪提供的低维光谱中重建高维信息光谱。我们提出了一种用于重建过程的去噪自动编码器,通过该编码器,BabyNutri可以从5维光谱中重建160维光谱。由于高维光谱具有丰富的宏量营养素的光吸收特征,可以实现更准确的宏量营养素估算。此外,考虑到婴儿食品含有复杂的成分,我们还设计了CNN营养估计模型,该模型对各种类型的婴儿食品具有良好的泛化性能。我们对88种婴儿食品的广泛实验表明,BabyNutri的光谱重建误差仅为5。91%,在相同的时间复杂度下,比最先进的基线降低了33%。此外,BabyNutri的营养估算性能不仅明显优于最先进、最具成本效益的解决方案,而且与专业光谱仪高度相关,相关系数为0。81,0。88,0。蛋白质、脂肪和碳水化合物的含量分别为82。然而,我们系统的价格只有商业解决方案的百分之一。我们还验证了BabyNutri在各种因素上都是稳健的。例如,环境光线,食物体积,甚至是看不见的婴儿食品样品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BabyNutri: A Cost-Effective Baby Food Macronutrients Analyzer Based on Spectral Reconstruction
The physical and physiological development of infants and toddlers requires the proper amount of macronutrient intake, making it an essential problem to estimate the macronutrient in baby food. Nevertheless, existing solutions are either too expensive or poor performing, preventing the widespread use of automatic baby nutrient intake logging. To narrow this gap, this paper proposes a cost-effective and portable baby food macronutrient estimation system, BabyNutri. BabyNutri exploits a novel spectral reconstruction algorithm to reconstruct high-dimensional informative spectra from low-dimensional spectra, which are available from low-cost spectrometers. We propose a denoising autoencoder for the reconstruction process, by which BabyNutri can reconstruct a 160-dimensional spectrum from a 5-dimensional spectrum. Since the high-dimensional spectrum is rich in light absorption features of macronutrients, it can achieve more accurate macronutrient estimation. In addition, considering that baby food contains complex ingredients, we also design a CNN nutrition estimation model with good generalization performance over various types of baby food. Our extensive experiments over 88 types of baby food show that the spectral reconstruction error of BabyNutri is only 5 . 91%, reducing 33% than the state-of-the-art baseline with the same time complexity. In addition, the nutrient estimation performance of BabyNutri not only obviously outperforms state-of-the-art and cost-effective solutions but also is highly correlated with the professional spectrometer, with the correlation coefficients of 0 . 81, 0 . 88, 0 . 82 for protein, fat, and carbohydrate, respectively. However the price of our system is only one percent of the commercial solution. We also validate that BabyNutri is robust regarding various factors, e . g ., ambient light, food volume, and even unseen baby food samples.
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