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Rapid identification of edible oil and swill-cooked dirty oil by using near-infrared spectroscopy and sparse representation classification

机译:利用近红外光谱和稀疏表示分类快速识别食用油和will油

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Rapid identification of edible oil and swill-cooked dirty oil is a challenging and important task in the field of food safety. The main object of this investigation was to distinguish edible oil (QO) and swill-cooked dirty oil (SO) by employing near-infrared (NIR) spectroscopy and the sparse representation classification (SRC) method. Because of the diversity and uncertainty of the species in swill-cooked dirty oil, building a classification model based on NIR spectroscopy faces the problems of complex systems and small numbers of samples. To improve the stability and accuracy of the identification, in the SRC method, the redundant dictionaries for QO and SO were trained, and the sparse representation coefficients for spectra in a validation set under both dictionaries were calculated. Then the spectra in the validation set were reconstructed with the sparse representation coefficients and the corresponding dictionary. Finally, the reconstruction errors under the QO and SO dictionaries were used as indicators for classification. Moreover, a simplified SRC algorithm (SRC-S) that directly uses the calibration set spectra as redundant dictionaries was proposed, and this removed the dictionary training process and avoided information loss during training. Compared with linear discriminant analysis (LDA) and partial least squares discriminant analysis (PLS-DA), the experimental results showed that the SRC-S outperformed SRC, and it reached a maximum classification accuracy of 95.37%, which proved that SRC-S and NIR spectroscopy can distinguish QO and SO.
机译:在食品安全领域中,快速鉴定食用油和水烹调的脏油是一项具有挑战性和重要的任务。这项研究的主要目的是通过使用近红外(NIR)光谱和稀疏表示分类(SRC)方法来区分食用油(QO)和水烹调的脏油(SO)。由于调制后的脏油中物种的多样性和不确定性,建立基于近红外光谱的分类模型面临着系统复杂和样品数量少的问题。为了提高识别的稳定性和准确性,在SRC方法中,对QO和SO的冗余字典进行了训练,并在两个字典下的验证集中计算了光谱的稀疏表示系数。然后使用稀疏表示系数和相应的字典重建验证集中的光谱。最后,将QO和SO词典下的重建误差用作分类指标。此外,提出了一种简化的SRC算法(SRC-S),该算法直接将校准集谱用作冗余字典,从而消除了字典训练过程,避免了训练过程中的信息丢失。与线性判别分析(LDA)和偏最小二乘判别分析(PLS-DA)相比,实验结果表明SRC-S优于SRC,并且最大分类精度达到95.37%,这证明SRC-S和NIR光谱可以区分QO和SO。

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