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Mining a new biometrics to improve the accuracy of keystroke dynamics-based authentication system on free-text

机译:挖掘一种新的生物识别学,提高自由文本中基于击键动态的认证系统的准确性

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Related works for applying keystroke dynamics (KD) on free text identification indicated that applying KD can improve the accuracy of personal authentication on free text. As the result, this paper proposes a new biometrics, i.e., the keystroke clusters map (KC-Map), by clustering users' keystrokes in order to effectively enhance the accuracy of personal authentication in free text. Since KC-Map is conducted via clustering, it is not suitable for traditional classifiers. In order to tackle this problem, the paper further proposes a keystroke clusters map similarity classifier (KCMS classifier). Experimental results positively show that the proposed KC-Map and KCMS classifier can efficiently improve the accuracy of personal authentication on free text with up to 1.27 times. In addition, one of the huge disadvantages on the current approaches in free text identification is that users are generally required to be trained for several months. Longer training time makes free text identification more impractical. Another motivation of this paper is to explore whether it is possible to shorten the training time into an acceptable range. Experimental results show that, to achieve relatively fair identification accuracy, users only need to carry out about 20 min for training. (C) 2019 Elsevier B.V. All rights reserved.
机译:在自由文本识别上应用击键动态(KD)的相关工作表明,应用KD可以提高自由文本上个人身份验证的准确性。结果,本文提出了一种新的生物识别方法,即击键群(KC-MAP),通过聚类用户击键,以便有效地提高自由文本中个人认证的准确性。由于KC-MAP通过聚类进行,因此它不适用于传统分类器。为了解决这个问题,本文还提出了击键簇图相似分类器(KCMS分类器)。实验结果表明,所提出的KC-MAP和KCMS分类器可以有效地提高自由文本的个人认证的准确性,高达1.27倍。此外,自由文本识别中目前方法的巨大缺点之一是用户通常需要培训数月。较长的训练时间使自由文本识别更加不切实际。本文的另一个动机是探索是否有可能将培训时间缩短到可接受的范围内。实验结果表明,为了实现相对公平的识别准确性,用户只需要执行大约20分钟进行培训。 (c)2019年Elsevier B.V.保留所有权利。

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