Bras Susana, Pinho Armando J
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:5838-41. doi: 10.1109/EMBC.2015.7319719.
Using the electrocardiogram signal (ECG) to identify and/or authenticate persons are problems still lacking satisfactory solutions. Yet, ECG possesses characteristics that are unique or difficult to get from other signals used in biometrics: (1) it requires contact and liveliness for acquisition (2) it changes under stress, rendering it potentially useless if acquired under threatening. Our main objective is to present an innovative and robust solution to the above-mentioned problem. To successfully conduct this goal, we rely on information-theoretic data models for data compression and on similarity metrics related to the approximation of the Kolmogorov complexity. The proposed measure allows the comparison of two (or more) ECG segments, without having to follow traditional approaches that require heartbeat segmentation (described as highly influenced by external or internal interferences). As a first approach, the method was able to cluster the data in three groups: identical record, same participant, different participant, by the stratification of the proposed measure with values near 0 for the same participant and closer to 1 for different participants. A leave-one-out strategy was implemented in order to identify the participant in the database based on his/her ECG. A 1NN classifier was implemented, using as distance measure the method proposed in this work. The classifier was able to identify correctly almost all participants, with an accuracy of 99% in the database used.
利用心电图信号(ECG)来识别和/或验证身份仍然是尚未得到令人满意解决的问题。然而,ECG具有独特的或难以从生物识别中使用的其他信号获取的特征:(1)采集时需要接触且被采集者处于活动状态;(2)它在压力下会发生变化,如果在威胁情况下采集可能会变得毫无用处。我们的主要目标是针对上述问题提出一种创新且稳健的解决方案。为了成功实现这一目标,我们依靠信息论数据模型进行数据压缩,并依靠与柯尔莫哥洛夫复杂度近似相关的相似性度量。所提出的度量允许比较两个(或更多)ECG片段,而无需遵循传统方法,传统方法需要进行心跳分割(被描述为受外部或内部干扰的影响很大)。作为第一种方法,该方法能够通过将所提出的度量分层,将数据分为三组:相同记录、同一参与者、不同参与者,对于同一参与者,分层值接近0,对于不同参与者,分层值更接近1。实施了留一法策略,以便根据其ECG识别数据库中的参与者。使用本文提出的方法作为距离度量,实现了一个1NN分类器。该分类器能够正确识别几乎所有参与者,在所使用的数据库中的准确率为99%。