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Application of the support vector machine to the identification of human pulse signals

机译:支持向量机在人脉冲信号识别中的应用

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Using the Mallat fast algorithm with sym5 wavelet, the pulse waves of 20 heroin druggers and 20 healthy normal subjects are decomposed into two levels. The squared distances from the third and tenth scale coefficients in the second-level decomposition of every pulse wave to the global mean value are used to form a feature vector. The extracted feature vectors have good separable characteristics in a two-dimensional plane. These 40 feature vectors are then used as training samples for designing the network of support vector machine. The network can successfully recognize 38 feature vectors. Using other 10 feature vectors of healthy normal subjects to test the generalization ability of the designed network, all of these vectors are correctly identified. The research result shows that the designed network of the support vector machine has good classification characteristics, generalization ability and some values in the identification of the pulse signals for heroin druggers.
机译:使用与Sym5小波的Mallat快速算法,20个海洛因药物和20个健康正常受试者的脉冲波分解成两个水平。从第二级分解的第三和第十刻度系数的平方距离每个脉波到全局平均值用于形成特征向量。提取的特征向量在二维平面中具有良好的可分离特性。然后将这40个特征向量用作用于设计支持向量机网络的训练样本。网络可以成功识别38个特征向量。使用健康正常对象的其他10个特征向量来测试所设计网络的泛化能力,所有这些向量都被正确识别。研究结果表明,设计的支持向量机的设计网络具有良好的分类特征,泛化能力和识别海洛因药物脉冲信号的值。

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