Image-Based Detection of Adulterants in Milk Using Convolutional Neural Network

IF 3.7 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY ACS Omega Pub Date : 2024-06-14 DOI:10.1021/acsomega.4c01274
Adhyayan Mamgain, Virkeshwar Kumar and Susmita Dash*, 
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Abstract

Adulteration of milk poses a severe human health hazard. Existing methods for detecting adulterants such as water, urea, ammonium sulfate (AmS), oils, and surfactants in milk are selective, expensive, and often challenging to implement in rural areas. The present work shows the potential of machine learning to detect milk adulterants using patterns of evaporative milk deposits. The final deposit patterns obtained after evaporation of the adulterated milk droplets are used to create an image data set. This data set is used to develop a deep learning model that deploys a convolutional neural network (CNN/ConvNet) to classify the distinct evaporation patterns obtained for different types and concentrations of adulterants. Further, we apply implicit and explicit regularization and compare their accuracies. The models trained with different regularization optimization schemes demonstrate that a CNN can be successfully implemented to detect adulterants in milk. Additionally, we experimentally determine how the type and concentration of milk adulterants, including ammonium sulfate (AmS), urea, oil, and surfactants, affect milk evaporative deposition. Added AmS and urea in milk crystallizes during evaporation to produce recognizable patterns that can be used for their detection. The method is capable of detecting AmS added in excess of 2.4% and urea in excess of 5% in diluted milk (20 wt %) due to the crystallization of AmS and urea, respectively. In the case of milk adulterated with vegetable oil, evaporation leads to the separation and accumulation of oil at the top of the deposit, leading to the detection of oil present in excess of 2% in 20% diluted milk. Furthermore, a minimum individual amount of 5% urea, 2.4% AmS, and 2% oil concentration in diluted milk (20%) is shown to be individually detected by evaporation pattern-based technique when milk is adulterated with all the adulterants (water, urea, AmS, and oil + surfactant) together. When subjected to different regularization optimization schemes, the CNN gives varying degrees of accuracy for successful detection. The use of implicit regularization in the form of data augmentation gives the best results with a testing average accuracy of 98%, showing that a CNN can be successfully deployed to classify and detect adulterants in milk.

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使用卷积神经网络基于图像检测牛奶中的掺假物质
牛奶掺假严重危害人类健康。现有检测牛奶中水、尿素、硫酸铵(AmS)、油类和表面活性剂等掺假物质的方法选择性强、成本高,而且在农村地区实施往往具有挑战性。目前的工作显示了机器学习利用牛奶蒸发沉积模式检测牛奶掺假物的潜力。掺假牛奶液滴蒸发后获得的最终沉积模式被用于创建图像数据集。该数据集用于开发一个深度学习模型,该模型部署了一个卷积神经网络(CNN/ConvNet),用于对不同类型和浓度的掺假物质所获得的不同蒸发模式进行分类。此外,我们还应用了隐式和显式正则化,并比较了它们的准确性。采用不同正则化优化方案训练的模型表明,CNN 可以成功地用于检测牛奶中的掺假物质。此外,我们还通过实验确定了牛奶掺杂物(包括硫酸铵 (AmS)、尿素、油和表面活性剂)的类型和浓度对牛奶蒸发沉积的影响。牛奶中添加的硫酸铵和尿素在蒸发过程中结晶,产生可识别的图案,可用于检测。由于 AmS 和尿素的结晶作用,该方法能够检测出稀释牛奶(20 wt %)中添加量超过 2.4% 的 AmS 和超过 5%的尿素。在牛奶中掺入植物油的情况下,蒸发会导致油脂在沉淀物顶部分离和积累,从而导致在 20% 的稀释牛奶中检测到超过 2% 的油脂。此外,当牛奶掺入所有掺杂物(水、尿素、AmS 和油+表面活性剂)时,基于蒸发模式的技术可单独检测出稀释牛奶(20%)中 5%的尿素、2.4% 的 AmS 和 2%的油。当采用不同的正则化优化方案时,CNN 可提供不同程度的成功检测精度。使用数据增强形式的隐式正则化效果最好,测试平均准确率为 98%,这表明 CNN 可以成功地用于分类和检测牛奶中的掺假物质。
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来源期刊
ACS Omega
ACS Omega Chemical Engineering-General Chemical Engineering
CiteScore
6.60
自引率
4.90%
发文量
3945
审稿时长
2.4 months
期刊介绍: ACS Omega is an open-access global publication for scientific articles that describe new findings in chemistry and interfacing areas of science, without any perceived evaluation of immediate impact.
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