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Runtime Optimization of Identification Event in ECG Based Biometric Authentication

机译:基于ECG的生物特征认证中识别事件的运行时优化

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Biometric Authentication has become a very popular method for different state-of-the-art security architectures. Albeit the ubiquitous acceptance and constant development in trivial biometric authentication methods such as fingerprint, palm-print, retinal scan etc., the possibility of producing highly competitive performance from somewhat less-popular methods still remains. Electrocardiogram (ECG) based multi-staged biometric authentication is such a method, which, despite its limited appearance in earlier research works, are currently being observed as equally high-performing as other trivial popular methods. The identification stage of this method suffers from requiring a high runtime, due to cross-matching of the new data with every single template data stored in the database, especially when dealing with huge amount of data. To solve this unaddressed problem, in this paper, we have proposed a K-means clustering based novel method where all the template data are clustered based on similarity, and only the most similar data cluster is searched instead of whole dataset during the identification event. Using our method we have achieved a maximum of 79.26% time reduction with 100% accuracy.
机译:对于不同的最新安全体系结构,生物特征认证已成为一种非常流行的方法。尽管在诸如指纹,掌纹,视网膜扫描等琐碎的生物特征认证方法中得到了普遍的接受和不断发展,但仍然存在由不太受欢迎的方法产生高度竞争性能的可能性。基于心电图(ECG)的多阶段生物特征认证就是这样一种方法,尽管在早期研究工作中出现的局限性有限,但目前正被视为与其他普通方法一样高性能。由于新数据与数据库中存储的每个模板数据的交叉匹配,因此该方法的识别阶段需要很高的运行时间,尤其是在处理大量数据时。为了解决这个未解决的问题,在本文中,我们提出了一种基于K-means聚类的新方法,该方法基于相似性对所有模板数据进行聚类,并且在识别事件期间仅搜索最相似的数据聚类而不是整个数据集。使用我们的方法,我们可以最大程度地减少79.26%的时间,并且准确度达到100%。

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