首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Application of KPCA combined with SVM in Raman spectral discrimination
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Application of KPCA combined with SVM in Raman spectral discrimination

机译:KPCA在拉曼光谱辨别中的应用结合SVM

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摘要

Raman spectroscopy has been widely used in discriminant analysis. In order to improve the accuracy of Raman spectroscopy discrimination, a model combining kernel principal component analysis (KPCA) and support vector machine (SVM) is proposed. Firstly, the Raman spectral discriminant data is collected, which is subjected to the fifth-order polynomial smoothing and vector normalization preprocessing to eliminate the influence of noise. Then, the collected unbalanced data is oversampled by the Synthetic Minority Over-sampling Technique algorithm, and the KPCA method is used to extract the features of the balanced data. The SVM discriminant model is established by selecting different kernel functions for the extracted features. In order to evaluate the performance of the KPCA-SVM discriminant model, it is compared with the PCA-SVM discriminant model under the same experimental conditions. The experimental results show that the KPCA-SVM discriminant model achieves a discriminative accuracy rate of 93.75%, which is better than that of the PCA-SVM discriminant model (87.5%). This study provides a new idea for improving the discrimination accuracy of Raman spectroscopy.
机译:拉曼光谱已被广泛用于判别分析。为了提高拉曼光谱识别的准确性,提出了一种组合内核主成分分析(KPCA)和支持向量机(SVM)的模型。首先,收集拉曼光谱判别数据,其经受第五阶多项式平滑和向量归一化预处理以消除噪声的影响。然后,通过合成少数群体过采样技术算法过采集收集的不平衡数据,KPCA方法用于提取平衡数据的特征。通过为提取的特征选择不同的内核函数来建立SVM判别模型。为了评估KPCA-SVM判别模型的性能,在相同的实验条件下将其与PCA-SVM判别模型进行比较。实验结果表明,KPCA-SVM判别模型实现了93.75%的鉴别精度率,比PCA-SVM判别模型更好(87.5%)。本研究提供了提高拉曼光谱辨别精度的新思想。

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