利用咖啡环效应和卷积神经网络检测牛奶掺假。

IF 2.3 3区 农林科学 Q2 CHEMISTRY, APPLIED Food Additives and Contaminants Part A-chemistry Analysis Control Exposure & Risk Assessment Pub Date : 2024-07-01 Epub Date: 2024-05-30 DOI:10.1080/19440049.2024.2358518
Tapan Parsain, Ajay Tripathi, Archana Tiwari
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引用次数: 0

摘要

报告了一种利用咖啡环纹鉴别牛奶中掺水和合成奶的低成本、有效方法。将牛奶样品用自来水(TW)、蒸馏水(DW)和矿泉水(MW)稀释后滴在玻璃载玻片上,观察咖啡环图案。从这些图案中提取咖啡环的面积、总颗粒面积和平均颗粒直径。计算每个环的颗粒总面积与环总面积之比。面积比与平均颗粒直径呈指数关系,与掺水物无关。与 TW 不同的是,DW 和 MW 掺假牛奶的比值随颗粒直径的变化而聚类和分类。这些结果与稀释水平无关,可用于掺假物分类。使用合成奶掺假的牛奶在整个稀释级别中呈现出多个同心环、花状结构和油球。Alexnet 模型用于对真奶中的水和合成奶掺假物进行分类。经过训练的模型在二分类和三分类中的准确率分别达到 96.7% 和 95.8%。这些结果使我们能够区分合成奶和纯牛奶,并在 TW 掺假奶中分离出 DW 和 MW。
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Detection of milk adulteration using coffee ring effect and convolutional neural network.

A low-cost and effective method is reported to identify water and synthetic milk adulteration of cow's milk using coffee ring patterns. The cow's milk samples were diluted with tap water (TW), distilled water (DW) and mineral water (MW) and drop cast onto glass slides to observe coffee ring patterns. The area of the ring, total particle area and average particle diameter were extracted from these patterns. For each ring, the ratio of total particle area versus total ring area was calculated. The area ratio, regardless of water adulterants, follows an exponential model with respect to average particle diameter. Unlike TW, the ratio for DW and MW adulterated milk are clustered and classified together with respect to the particle diameter. These results were independent of dilution level and are used for adulterant classification. The ring of milk adulterated using synthetic milk gave multiple concentric rings, flower-like structures, and oil globules throughout the dilution level. An Alexnet model was used to classify water and synthetic milk adulterants in authentic milk. The trained model could achieve 96.7% and 95.8% accuracy for binary and tertiary classification respectively. These results enable us to distinguish synthetic milk from pure milk and segregate DW and MW with respect to TW adulterated milk.

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来源期刊
CiteScore
7.40
自引率
6.90%
发文量
136
审稿时长
3 months
期刊介绍: Food Additives & Contaminants: Part A publishes original research papers and critical reviews covering analytical methodology, occurrence, persistence, safety evaluation, detoxification and regulatory control of natural and man-made additives and contaminants in the food and animal feed chain. Papers are published in the areas of food additives including flavourings, pesticide and veterinary drug residues, environmental contaminants, plant toxins, mycotoxins, marine biotoxins, trace elements, migration from food packaging, food process contaminants, adulteration, authenticity and allergenicity of foods. Papers are published on animal feed where residues and contaminants can give rise to food safety concerns. Contributions cover chemistry, biochemistry and bioavailability of these substances, factors affecting levels during production, processing, packaging and storage; the development of novel foods and processes; exposure and risk assessment.
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