Miniature spectrometer data analytics for food fraud

IF 1.4 3区 农林科学 Q4 FOOD SCIENCE & TECHNOLOGY
Fayas Asharindavida, Omar Nibouche, James Uhomoibhi, Jun Liu, Jordan Vincent, Hui Wang
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引用次数: 1

Abstract

Machine learning has been extensively used for analyzing spectral data in food quality management. However, collecting high-quality spectral data from miniature spectrometers outside the laboratory is challenging due to various factors such as distortions, noise, high dimensionality, and collinearity. This paper presents an in-depth analysis of food datasets collected from miniature spectrometers to evaluate the data quality and characteristics, by focusing on a case study of olive oil quality check, where various machine learning models were applied to differentiate pure and adulterated olive oil. Furthermore, the impact of pre-processing techniques on data distortions was studied. It presents a comprehensive pipeline, including data pre-processing, dimension reduction, classification, and regression analysis, and deploys different algorithms for comparative classification and regression analysis. The model performances were assessed using 2 separate methods: tenfold cross-validation on an entire dataset with 10% random testing, and an entire test set collected in different environments (multi-session validation). The first validation approach reached classification rates of up to 96.73%, while the second achieved 83.32%. These results demonstrate that cost-effective miniature spectrometers augmented with a suitable machine learning pipeline could execute classification tasks on par with non-portable and more expensive spectrometers. Furthermore, the study highlights the requirement of specialized algorithms to handle different ambient conditions affecting data acquisition and to eliminate performance gaps, making miniature spectrometers suitable for in situ scenarios. This work extends previous research to enable consumers becoming the first line in the defense against food fraud.

Abstract Image

食品欺诈的微型光谱仪数据分析
机器学习已被广泛应用于食品质量管理中的光谱数据分析。然而,由于各种因素,如失真、噪声、高维和共线性,从实验室外的微型光谱仪收集高质量的光谱数据具有挑战性。本文深入分析了从微型光谱仪收集的食品数据集,以评估数据质量和特征,重点研究了橄榄油质量检查的案例,其中应用各种机器学习模型来区分纯橄榄油和掺假橄榄油。进一步研究了预处理技术对数据失真的影响。它提供了包括数据预处理、降维、分类和回归分析在内的全面管道,并部署了不同的算法进行分类和回归分析的比较。使用两种不同的方法评估模型的性能:在整个数据集上进行十倍交叉验证,并进行10%的随机测试,以及在不同环境中收集的整个测试集(多会话验证)。第一种验证方法的分类率达到96.73%,第二种验证方法的分类率达到83.32%。这些结果表明,具有成本效益的微型光谱仪增强了合适的机器学习管道,可以执行与非便携式和更昂贵的光谱仪相当的分类任务。此外,该研究强调需要专门的算法来处理影响数据采集的不同环境条件,并消除性能差距,使微型光谱仪适用于现场场景。这项工作扩展了以前的研究,使消费者成为防御食品欺诈的第一道防线。
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来源期刊
CiteScore
3.70
自引率
4.20%
发文量
46
审稿时长
>12 weeks
期刊介绍: The JCF publishes peer-reviewed original Research Articles and Opinions that are of direct importance to Food and Feed Safety. This includes Food Packaging, Consumer Products as well as Plant Protection Products, Food Microbiology, Veterinary Drugs, Animal Welfare and Genetic Engineering. All peer-reviewed articles that are published should be devoted to improve Consumer Health Protection. Reviews and discussions are welcomed that address legal and/or regulatory decisions with respect to risk assessment and management of Food and Feed Safety issues on a scientific basis. It addresses an international readership of scientists, risk assessors and managers, and other professionals active in the field of Food and Feed Safety and Consumer Health Protection. Manuscripts – preferably written in English but also in German – are published as Research Articles, Reviews, Methods and Short Communications and should cover aspects including, but not limited to: · Factors influencing Food and Feed Safety · Factors influencing Consumer Health Protection · Factors influencing Consumer Behavior · Exposure science related to Risk Assessment and Risk Management · Regulatory aspects related to Food and Feed Safety, Food Packaging, Consumer Products, Plant Protection Products, Food Microbiology, Veterinary Drugs, Animal Welfare and Genetic Engineering · Analytical methods and method validation related to food control and food processing. The JCF also presents important News, as well as Announcements and Reports about administrative surveillance.
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