Utilizing deep neural nets for an embedded ECG-based biometric authentication system

A. Page, A. Kulkarni, T. Mohsenin
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引用次数: 74

Abstract

This work presents a low-power, embedded ECG pattern recognition system for the purpose of biometric authentication. We believe that ECG coupled with a secondary biometric marker such as fingerprint will play a key role in wearable security as wearables' popularity continues to grow. The key objective of this work is to implement a system that is reliable, robust, and fast while maintaining a low area and power footprint. A streamlined approach was devised that utilized neural networks to both identify QRS complex segments of the ECG signal and then perform user authentication on these segments. When tested on 90 individuals, the system is able to achieve 99.54% accuracy for QRS complex identification, and, on average, 99.85% sensitivity, 99.96% specificity, and 0.0582% EER for user identification. When implemented on an Artix-7 FPGA, the entire design occupies 1,712 slices (5%) and 978.7 KB of memory and dissipates 31.75 mW of total chip dynamic power when running at 12.5 MHz.
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基于深度神经网络的嵌入式脑电图生物识别认证系统
本文提出了一种低功耗嵌入式心电模式识别系统,用于生物识别认证。我们相信,随着可穿戴设备的普及,ECG与指纹等二级生物识别标记相结合,将在可穿戴安全方面发挥关键作用。这项工作的关键目标是实现一个可靠、健壮和快速的系统,同时保持低面积和功耗。设计了一种简化的方法,利用神经网络识别心电信号的QRS复杂片段,然后对这些片段进行用户认证。当对90个个体进行测试时,该系统能够达到99.54%的QRS复杂识别准确率,并且对于用户识别,平均灵敏度为99.85%,特异性为99.96%,EER为0.0582%。当在Artix-7 FPGA上实现时,整个设计占用1,712片(5%)和978.7 KB内存,并且在12.5 MHz运行时消耗31.75 mW的总芯片动态功率。
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