基于cnn的脑电分类方法用于药物使用检测

Hui Zeng, Banghua Yang, Xuelin Gu, Yongcong Li, Xinxing Xia, Shouwei Gao
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引用次数: 0

摘要

通常检测一个人是否使用药物的方法需要采集受试者的生物样本,由于样本的限制,生物样本有时间限制。为了避免这种情况,本文提出了一种基于cnn的脑电分类方法用于吸毒检测,该方法不需要采集被试的生物样本,并且可以追踪被试较长的用药史。本文设计了一种基于卷积神经网络的脑电信号分类算法,该算法在卷积层之后引入批归一化,并在全连接层引入dropout运算,以加快训练过程,从而区分健康对照和吸毒成瘾者,与传统机器学习算法相比,该算法降低了参数的敏感性,有效地减轻了过拟合的发生,提高了准确率。数据收集自8名健康对照者和8名吸毒者。该算法经过8次交叉验证,分类准确率达到85.46%。分类结果表明,该方法是一种有效的检测被检对象是否为吸毒人员的方法,可以更容易地控制隐藏的吸毒人员,减少毒品造成的社会危害。
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CNN-based EEG Classification Method for Drug Use Detection
Common methods to detect whether a person uses drugs require taking biological samples of the subject, which have time limitation due to the samples. To avoid this, this paper proposes a CNN-based EEG classification method for drug use detection, which does not require taking biological samples of the subject and can trace a longer drug use history of the subject. In this paper, a convolutional neural network-based EEG classification algorithm incorporating batch normalization after the convolutional layer and also introducing dropout operation in the fully connected layer to speed up the training process is designed to distinguish between healthy controls and drug addicts, which reduces the sensitivity of parameters, effectively mitigates the occurrence of overfitting and improves the accuracy compared to traditional machine learning algorithms. Data were collected from eight healthy controls and eight drug addicts. The algorithm obtained the classification accuracy of 85.46% using eight-fold cross-validation. The result of classification shows that the method is an effective way to detect whether the examined person is drug addict, which can easier bring hidden drug addicts under control and reduce the social harm caused by drugs.
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