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Continuous authentication using one-class classifiers and their fusion

机译:使用一类分类器进行连续认证及其融合

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While developing continuous authentication systems (CAS), we generally assume that samples from both genuine and impostor classes are readily available. However, the assumption may not be true in certain circumstances. Therefore, we explore the possibility of implementing CAS using only genuine samples. Specifically, we investigate the usefulness of four one-class classifiers OCC (elliptic envelope, isolation forest, local outliers factor, and one-class support vector machines) and their fusion. The performance of these classifiers was evaluated on four distinct behavioral biometric datasets, and compared with eight multi-class classifiers (MCC). The results demonstrate that if we have sufficient training data from the genuine user the OCC, and their fusion can closely match the performance of the majority of MCC. Our findings encourage the research community to use OCC in order to build CAS as it does not require knowledge of impostor class during the enrollment process.
机译:在开发连续身份验证系统(CAS)时,我们通常会假设来自真实和冒名顶替者类别的样本都容易获得。但是,在某些情况下该假设可能不正确。因此,我们探索了仅使用真实样本实施CAS的可能性。具体来说,我们研究了四个一类分类器OCC(椭圆包络,隔离林,局部离群值因子和一类支持向量机)及其融合的有用性。在四个不同的行为生物特征数据集上评估了这些分类器的性能,并与八个多分类器(MCC)进行了比较。结果表明,如果我们从真正的用户那里获得了足够的培训数据,则OCC及其融合可以与大多数MCC的性能紧密匹配。我们的发现鼓励研究界使用OCC来构建CAS,因为它不需要在注册过程中了解冒名顶替者的知识。

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