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A multivariate Singular Spectrum Analysis approach to clinically-motivated movement biometrics

机译:多元奇异谱分析方法用于临床动机运动生物识别

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Biometrics are quantities obtained from analyses of biological measurements. For human based biometrics, the two main types are clinical and authentication. This paper presents a brief comparison between the two, showing that on many occasions clinical biometrics can motivate for its use in authentication applications. Since several clinical biometrics deal with temporal data and also involve several dimensions of movement, we also present a new application of Singular Spectrum Analysis, in particular its multivariate version, to obtain significant frequency information across these dimensions. We use the most significant frequency component as a biometric to distinguish between various types of human movements. The signals were collected from triaxial accelerometers mounted in an object that is handled by a user. Although this biometric was obtained in a clinical setting, it shows promise for authentication.
机译:生物识别是从生物测量分析中获得的数量。对于基于人类的生物识别,两种主要类型是临床和身份验证。本文介绍了两者之间的简要比较,表明在许多情况下,临床生物识别技术可以激发其在身份验证应用程序中的使用。由于一些临床生物识别技术处理时间数据,并且还涉及运动的多个维度,因此,我们还提出了奇异频谱分析(特别是其多元版本)的新应用,以获取这些维度上的重要频率信息。我们使用最重要的频率成分作为生物特征识别,以区分各种类型的人体运动。信号是从安装在由用户处理的物体中的三轴加速度计中收集的。尽管此生物特征是在临床环境中获得的,但它显示出了进行认证的希望。

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