PPG Signal Identification Method Based on CSASVM

Kaili Wang, Xiaohui Chen
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引用次数: 2

Abstract

PPG signal is the inherent physiological signal of human body. It contains a lot of physiological and pathological information of human body. There are great differences in PPG signals among different individuals, and it has good uniqueness and confidentiality. This paper proposes an identity recognition method that uses the Crow Search Algorithm (CSA) to optimize the support vector machine (SVM) classification model. The method uses the matching pursuit (MP) sparse decomposition algorithm to sparse the individual PPG signals to extract the feature values of the PPG signals, and then uses the Relief algorithm to filter out the 16 main features to form feature vectors. The CSA algorithm is used to find the optimal parameters and create the optimal support vector machine classification model. The experiment proves that compared with the traditional SVM model, the accuracy of the optimization is increased by 10%-15%, and the recognition rate is 97.5%.
基于CSASVM的PPG信号识别方法
PPG信号是人体固有的生理信号。它包含了大量人体的生理和病理信息。不同个体间PPG信号存在较大差异,具有良好的唯一性和保密性。本文提出了一种利用Crow搜索算法(CSA)优化支持向量机(SVM)分类模型的身份识别方法。该方法使用匹配追踪(MP)稀疏分解算法对单个PPG信号进行稀疏处理,提取PPG信号的特征值,然后使用Relief算法过滤出16个主要特征,形成特征向量。采用CSA算法寻找最优参数,建立最优支持向量机分类模型。实验证明,与传统的SVM模型相比,优化后的准确率提高了10% ~ 15%,识别率达到97.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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