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The statistical fusion identification of dairy products based on extracted Raman spectroscopy

机译:基于提取拉曼光谱法的乳制品统计融合鉴定

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At present, practical and rapid identification techniques for dairy products are still scarce. Taking different brands of pasteurized milk as an example, they are all milky white in appearance, and their Raman spectra are very similar, so it is not feasible to identify them directly using the naked eye. In the current work, a clear feature extraction and fusion strategy based on a combination of Raman spectroscopy and a support vector machine (SVM) algorithm was demonstrated. The results showed a 58% average recognition accuracy rate for dairy products as based on the original Raman full spectral data and up to nearly 70% based on a single spectral interval. Data normalization processing effectively improved the recognition accuracy rate. The average recognition accuracy rate of dairy products reached 91% based on the normalized Raman full spectral data or nearly 85% based on a normalized single spectral interval. The fusion of multispectral feature regions yielded high accuracy and operation efficiency. After screening and optimizing based on SVM algorithm, the best spectral feature intervals were determined to be 335–354 cm ~(?1) , 435–454 cm ~(?1) , 485–540 cm ~(?1) , 820–915 cm ~(?1) , 1155–1185 cm ~(?1) , 1300–1414 cm ~(?1) , and 1415–1520 cm ~(?1) under the experimental conditions, and the average identification accuracy rate here reached 93%. The developed scheme has the advantages of clear feature extraction and fusion, and short identification time, and it provides a technical reference for food quality control.
机译:目前,乳制品的实用和快速识别技术仍然稀缺。以不同品牌的巴氏杀菌牛奶为例,它们都是乳白色的外观,它们的拉曼光谱非常相似,因此直接使用肉眼识别它们是不可行的。在当前的工作中,证明了基于拉曼光谱和支持向量机(SVM)算法的组合的清晰特征提取和融合策略。结果表明,基于原始拉曼全谱数据的乳制品的平均识别精度率为58%,基于单个光谱间隔高达近70%。数据归一化处理有效地提高了识别精度率。基于标准化的单光谱间隔,基于标准化的拉曼全谱数据或近85%,乳制品的平均识别精度率达到91%。多光谱特征区域的融合产生了高精度和操作效率。在基于SVM算法筛选和优化之后,最佳光谱特征间隔被确定为335-354cm〜(?1),435-454cm〜(?1),485-540cm〜(?1),820- 915厘米〜(α1),1155-1185cm〜(α1),1300-1414cm〜(?1),和1415-1520cm〜(?1)在实验条件下,这里的平均识别精度率达到93%。开发方案具有清晰特征提取和融合的优点,以及短鉴定时间,为食品质量控制提供了技术参考。

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