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Feature selection for biometric recognition based on electrocardiogram signals

机译:基于心电图信号的生物特征识别特征选择

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Currently the demand for the development of more precise and reliable methods of person identification have received attention from the academic community and industry, with Biometrics being one of these new approaches. The term `Biometrics' is used to refer to identification techniques based on physical or behavioural characteristics. As biometric recognition becomes increasingly popular, the fear of circumvention, obfuscation and replay attacks is a rising concern. Since the traditional biometric modalities (face, iris and fingerprint) are not able to supply the needs of every possible security requirement, numerous emerging biometric modalities are presented, trying to fill the gap. Biomedical signals, like electrocardiogram (ECG) and electroencephalogram (EEG), have been proposed as emerging biometric modalities. The advantages of using the ECG for biometric recognition can be summarized as universality, permanence, uniqueness, robustness to attacks, liveness detection. According to the utilized features, the existing ECG based biometric systems can be classified to fiducial, non-fiducial and hybrids systems. This papers analyses the impact of some feature selection strategies like Genetic Algorithm, Memetic Algorithm and Particle Swarm Optimization on the performance of Biometric Systems based on ECG using K-Nearest Neighbours, Support Vector Machines, Optimum Path Forest and a Euclidean Distance Classifier for classification task. The results show that there is a subset of features extracted from the ECG signal that provides high recognition rates.
机译:当前,对于开发更精确和可靠的身份识别方法的需求已经引起了学术界和业界的关注,其中生物识别技术是这些新方法之一。 “生物识别”一词用于指基于身体或行为特征的识别技术。随着生物特征识别的日益普及,对规避,混淆和重播攻击的担忧日益引起人们的关注。由于传统的生物特征识别方法(面部,虹膜和指纹)无法满足每种可能的安全要求,因此提出了许多新兴的生物特征识别方法,以填补空白。已经提出了诸如心电图(ECG)和脑电图(EEG)等生物医学信号作为新兴的生物特征识别方式。使用ECG进行生物识别的优势可以概括为普遍性,永久性,唯一性,对攻击的鲁棒性,活跃性检测。根据所利用的特征,可以将现有的基于ECG的生物识别系统分类为基准,非基准和混合系统。本文分析了遗传算法,模因算法和粒子群优化等特征选择策略对基于K最近邻,支持向量机,最优路径森林和欧氏距离分类器进行ECG的生物识别系统性能的影响。结果表明,从ECG信号中提取的特征子集可提供较高的识别率。

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