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基于近红外光谱的农食粉末过敏原在线分类的域自适应。

Domain Adaptation for In-Line Allergen Classification of Agri-Food Powders Using Near-Infrared Spectroscopy.

机构信息

Food, Water, Waste Research Group, Faculty of Engineering, University Park, University of Nottingham, Nottingham NG7 2RD, UK.

出版信息

Sensors (Basel). 2022 Sep 24;22(19):7239. doi: 10.3390/s22197239.

Abstract

The addition of incorrect agri-food powders to a production line due to human error is a large safety concern in food and drink manufacturing, owing to incorporation of allergens in the final product. This work combines near-infrared spectroscopy with machine-learning models for early detection of this problem. Specifically, domain adaptation is used to transfer models from spectra acquired under stationary conditions to moving samples, thereby minimizing the volume of labelled data required to collect on a production line. Two deep-learning domain-adaptation methodologies are used: domain-adversarial neural networks and semisupervised generative adversarial neural networks. Overall, accuracy of up to 96.0% was achieved using no labelled data from the target domain moving spectra, and up to 99.68% was achieved when incorporating a single labelled data instance for each material into model training. Using both domain-adaptation methodologies together achieved the highest prediction accuracies on average, as did combining measurements from two near-infrared spectroscopy sensors with different wavelength ranges. Ensemble methods were used to further increase model accuracy and provide quantification of model uncertainty, and a feature-permutation method was used for global interpretability of the models.

摘要

由于人为错误将不正确的农业食品粉末添加到生产线中,是食品和饮料制造中的一个重大安全问题,因为过敏原会被掺入最终产品中。这项工作结合了近红外光谱和机器学习模型,用于早期检测这个问题。具体来说,采用域自适应技术将在静态条件下采集的光谱模型转移到移动样本上,从而最大限度地减少在生产线上采集所需的标记数据量。使用了两种深度学习域自适应方法:对抗性神经网络和半监督生成对抗性神经网络。总的来说,在没有来自目标域移动光谱的标记数据的情况下,最高可达到 96.0%的准确率,而在将每个材料的单个标记数据实例纳入模型训练时,可达到 99.68%的准确率。同时使用两种域自适应方法的平均预测准确率最高,同时使用具有不同波长范围的两个近红外光谱传感器的测量结果也可以提高模型准确率。采用集成方法进一步提高了模型准确率,并提供了模型不确定性的量化,还使用特征置换方法对模型进行了全局可解释性分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5019/9570570/236c576e3630/sensors-22-07239-g001.jpg

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