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引用次数: 249

摘要

生物识别身份验证基于用户固有的、唯一的特征——你是谁——来验证用户。除了生理生物识别技术外,行为生物识别技术已被证明在验证用户身份方面非常有用。鼠标动力学,以其独特的鼠标运动模式,就是这样一种行为生物计量学。在本文中,我们提出了一个使用鼠标动态的用户验证系统,该系统既准确又高效,足以供将来使用。我们系统的关键特征在于使用更细粒度(逐点)的基于角度的鼠标移动指标进行用户验证。这些新的度量标准在每个人之间是相对独特的,并且独立于计算平台。此外,我们利用支持向量机(svm)进行准确和快速的分类。我们的技术在不同的操作平台上都很健壮,不需要专门的硬件。通过一系列实验验证了该方法的有效性。实验结果表明,该系统能够准确、及时地对用户进行身份验证,且系统开销较小。
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An efficient user verification system via mouse movements
Biometric authentication verifies a user based on its inherent, unique characteristics --- who you are. In addition to physiological biometrics, behavioral biometrics has proven very useful in authenticating a user. Mouse dynamics, with their unique patterns of mouse movements, is one such behavioral biometric. In this paper, we present a user verification system using mouse dynamics, which is both accurate and efficient enough for future usage. The key feature of our system lies in using much more fine-grained (point-by-point) angle-based metrics of mouse movements for user verification. These new metrics are relatively unique from person to person and independent of the computing platform. Moreover, we utilize support vector machines (SVMs) for accurate and fast classification. Our technique is robust across different operating platforms, and no specialized hardware is required. The efficacy of our approach is validated through a series of experiments. Our experimental results show that the proposed system can verify a user in an accurate and timely manner, and induced system overhead is minor.
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9.20
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