Background: Biometric Systems (BS) are based on a pattern recognition problem where the individual traits of a person are coded and compared. The Electrocardiogram (ECG) as a biometric emerged, as it fulfills the requirements of a BS.
Methods: Inspired by the high performance shown by Deep Neural Networks(DNN), this work proposes two architectures to improve current results in both identification and authentication: Temporal Convolutional Neural Network (TCNN) and Recurrent Neural Network (RNN). The last two results weresubmitted to a simple classifier, which exploits the error of prediction of theformer and the scores given by the last.
Results: The robustness and applicability of these architectures were tested onFantasia, MIT-BIH and CYBHi databases. The TCNN outperforms the RNNachieving 100%, 96% and 90% of accuracy, respectively, for identification and 0.0%, 0.1% and 2.2% equal error rate for authentication.
Conclusions: When comparing to previous work, both architectures reachedresults beyond the state-of-the-art. Even though this experience was a success,the inclusion of these techniques may provide a system that could reduce thevalidation acquisition time.