Karimian Nima, Tehranipoor Mark, Forte Domenic
IEEE Trans Biomed Eng. 2017 Jun;64(6):1400-1411. doi: 10.1109/TBME.2016.2607020. Epub 2016 Sep 8.
Traditional passwords are inadequate as cryptographic keys, as they are easy to forge and are vulnerable to guessing. Human biometrics have been proposed as a promising alternative due to their intrinsic nature. Electrocardiogram (ECG) is an emerging biometric that is extremely difficult to forge and circumvent, but has not yet been heavily investigated for cryptographic key generation. ECG has challenges with respect to immunity to noise, abnormalities, etc. In this paper, we propose a novel key generation approach that extracts keys from real-valued ECG features with high reliability and entropy in mind. Our technique, called interval optimized mapping bit allocation (IOMBA), is applied to normal and abnormal ECG signals under multiple session conditions. We also investigate IOMBA in the context of different feature extraction methods, such as wavelet, discrete cosine transform, etc., to find the best method for feature extraction. Experiments of IOMBA show that 217-, 38-, and 100-bit keys with 99.9%, 97.4%, and 95% average reliability and high entropy can be extracted from normal, abnormal, and multiple session ECG signals, respectively. By allowing more errors or lowering entropy, key lengths can be further increased by tunable parameters of IOMBA, which can be useful in other applications. While IOMBA is demonstrated on ECG, it should be useful for other biometrics as well.
传统密码作为加密密钥并不适用,因为它们容易被伪造且容易被猜出。由于人体生物特征的固有特性,已被提议作为一种有前途的替代方案。心电图(ECG)是一种新兴的生物特征,极难伪造和规避,但尚未针对加密密钥生成进行深入研究。ECG在抗噪声、抗异常等方面存在挑战。在本文中,我们提出了一种新颖的密钥生成方法,该方法在提取实值ECG特征时充分考虑了高可靠性和熵。我们的技术称为区间优化映射比特分配(IOMBA),应用于多会话条件下的正常和异常ECG信号。我们还在不同特征提取方法(如小波、离散余弦变换等)的背景下研究IOMBA,以找到最佳的特征提取方法。IOMBA实验表明,分别可以从正常、异常和多会话ECG信号中提取平均可靠性为99.9%、97.4%和95%且具有高熵的217位、38位和100位密钥。通过允许更多错误或降低熵,可以通过IOMBA的可调参数进一步增加密钥长度,这在其他应用中可能会有用。虽然IOMBA是在ECG上进行演示的,但它对其他生物特征也应该是有用的。