IEEE Trans Biomed Circuits Syst. 2020 Apr;14(2):198-208. doi: 10.1109/TBCAS.2020.2974387. Epub 2020 Feb 17.
Biometrics such as facial features, fingerprint, and iris are being used increasingly in modern authentication systems. These methods are now popular and have found their way into many portable electronics such as smartphones, tablets, and laptops. Furthermore, the use of biometrics enables secure access to private medical data, now collected in wearable devices such as smartwatches. In this work, we present an accurate low-power device authentication system that employs electrocardiogram (ECG) signals as the biometric modality. The proposed ECG processor consists of front-end signal processing of ECG signals and back-end neural networks (NNs) for accurate authentication. The NNs are trained using a cost function that minimizes intra-individual distance over time and maximizes inter-individual distance. Efficient low-power hardware was implemented by using fixed coefficients for ECG signal pre-processing and by using joint optimization of low-precision and structured sparsity for the NNs. We implemented two instances of ECG authentication hardware with 4X and 8X structurally-compressed NNs in 65 nm LP CMOS, which consume low power of 62.37 μW and 75.41 μW for real-time ECG authentication with a low equal error rate of 1.36% and 1.21%, respectively, for a large 741-subject in-house ECG database. The hardware was evaluated at 10 kHz clock frequency and 1.2 V voltage supply.
生物识别技术,如面部特征、指纹和虹膜,在现代身份验证系统中被越来越多地使用。这些方法现在很流行,已经在许多便携式电子产品中得到应用,如智能手机、平板电脑和笔记本电脑。此外,生物识别技术的使用使得能够安全地访问现在可穿戴设备(如智能手表)中收集的私人医疗数据。在这项工作中,我们提出了一种准确的低功耗设备身份验证系统,该系统采用心电图(ECG)信号作为生物识别模式。所提出的 ECG 处理器由 ECG 信号的前端信号处理和后端神经网络(NN)组成,用于准确的身份验证。NN 使用成本函数进行训练,该函数最小化个体内随时间的距离,最大化个体间的距离。通过使用固定系数进行 ECG 信号预处理,并对低精度和结构化稀疏进行联合优化,实现了高效的低功耗硬件。我们在 65nm LP CMOS 中实现了两个 ECG 认证硬件实例,分别具有 4X 和 8X 结构压缩的 NN,对于大型的 741 个内部 ECG 数据库,实时 ECG 认证的低功耗分别为 62.37 μW 和 75.41 μW,低等错误率分别为 1.36%和 1.21%。硬件在 10kHz 时钟频率和 1.2V 电源电压下进行了评估。