Department of Computer and Information Technology, Faculty of Engineering, Razi University, Kermanshah, Iran.
J Med Syst. 2019 Jul 26;43(9):297. doi: 10.1007/s10916-019-1364-8.
New biometric identification techniques are continually being developed to meet various applications. Electroencephalography (EEG) signals may provide a reasonable option for this type of identification due its unique features that overcome the lacks of other common methods. Currently, however, the processing load for such signals requires considerable time and labor. New methods and algorithms have attempted to reduce EEG processing time, including a reduction of the number of electrodes and segmenting the EEG data into its typical frequency bands. This work complements other efforts by proposing a genetic algorithm to reduce the number of necessary electrodes for measurements by EEG devices. Using a public EEG dataset of 109 subjects who underwent relaxation with eye-open and eye-closed stimuli, we aimed to determine the minimum set of electrodes required for optimum identification accuracy in each EEG sub-band of both stimuli. The results were encouraging and it was possible to accurately identify a subject using about 10 out of 64 electrodes. Moreover, higher frequency bands required a fewer number of electrodes for identification compared with lower frequency bands.
新的生物识别技术不断被开发出来,以满足各种应用的需求。脑电图(EEG)信号由于其独特的特征,克服了其他常见方法的不足,因此可能成为这种识别类型的合理选择。然而,目前这种信号的处理负载需要大量的时间和精力。新的方法和算法试图减少 EEG 的处理时间,包括减少电极的数量和将 EEG 数据分段为其典型的频带。这项工作通过提出一种遗传算法来减少 EEG 设备测量所需的电极数量,从而补充了其他的努力。使用一个包含 109 名被试者的公共 EEG 数据集,这些被试者在进行睁眼和闭眼放松刺激时,我们的目标是确定在每个刺激的 EEG 子带中,获得最佳识别精度所需的最小电极数量。结果令人鼓舞,使用大约 64 个电极中的 10 个电极,就可以准确地识别一个被试者。此外,与低频带相比,高频带需要更少的电极数量来进行识别。