Laser & Optoelectronics Progress, Volume. 58, Issue 14, 1404003(2021)

Research on Spectral Recognition of Drug Mixture Based on SVM-MLP Fusion Model

Wenjie Yan1, Wenhui Lu2, and Jifen Wang1、*
Author Affiliations
  • 1School of Investigation, People's Public Security University of China, Beijing 102600, China
  • 2Henan Police College, Zhengzhou, Henan 450000, China
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    Aiming at the physical evidence of heroin mixtures and methamphetamine mixtures, a spectral identification method for drug mixtures based on the support vector machine-multilayer perceptron(SVM-MLP) fusion model is proposed. In the experiment, 90 sets of spectral data of the mixture of heroin, methamphetamine and other substances were obtained, and the baseline automatic correction and peak area normalization were used to eliminate noise and use principal component analysis extract characteristic wavenumber data spectral data fusion classification model based on SVM and MLP. The result shows that the SVM model based on Gaussian kernel function, linear kernel function, and polynomial kernel function can achieve accurate classification of 97.8%, 97.8%, and 95.6% of heroin mixture samples, respectively. The MLP model can achieve 96.5% for methamphetamine mixture samples accurate classification. The SVM-MLP fusion model is non-destructive, convenient and efficient is helpful for the identification of drug evidence in anti-drug cases and the judicial sentencing of the person involved has a certain universality and reference significance.

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    Wenjie Yan, Wenhui Lu, Jifen Wang. Research on Spectral Recognition of Drug Mixture Based on SVM-MLP Fusion Model[J]. Laser & Optoelectronics Progress, 2021, 58(14): 1404003

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    Paper Information

    Category: Detectors

    Received: Oct. 20, 2020

    Accepted: Nov. 18, 2020

    Published Online: Jul. 14, 2021

    The Author Email: Wang Jifen (1450201565@qq.com)

    DOI:10.3788/LOP202158.1404003

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