School of Automation and Information Engineering, Sichuan University of Science and Engineering, Zigong 643000, China.
Artificial Intelligence Key Laboratory of Sichuan Province, Sichuan University of Science and Engineering, Zigong 643000, China.
Sensors (Basel). 2024 Oct 11;24(20):6558. doi: 10.3390/s24206558.
With the acceleration of global population aging, the elderly have an increasing demand for home care and nursing institutions, and the significance of health prevention and management of the elderly has become increasingly prominent. In this context, we propose a biometric recognition method for multi-modal biomedical signals. This article focuses on three key signals that can be picked up by wearable devices: ECG, PPG, and breath (RESP). The RESP signal is introduced into the existing two-mode signal identification for multi-mode identification. Firstly, the features of the signal in the time-frequency domain are extracted. To represent deep features in a low-dimensional feature space and expedite authentication tasks, PCA and LDA are employed for dimensionality reduction. MCCA is used for feature fusion, and SVM is used for identification. The accuracy and performance of the system were evaluated using both public data sets and self-collected data sets, with an accuracy of more than 99.5%. The experimental data fully show that this method significantly improves the accuracy of identity recognition. In the future, combined with the signal monitoring function of wearable devices, it can quickly identify individual elderly people with abnormal conditions, provide safer and more efficient medical services for the elderly, and relieve the pressure on medical resources.
随着全球人口老龄化的加速,老年人对家庭护理和护理机构的需求不断增加,老年人健康预防和管理的意义也变得越来越重要。在这种情况下,我们提出了一种多模态生物医学信号的生物识别方法。本文专注于可通过可穿戴设备采集到的三种关键信号:心电图(ECG)、光电容积脉搏波(PPG)和呼吸(RESP)。将 RESP 信号引入现有的双模信号识别中进行多模识别。首先,提取信号的时频域特征。为了在低维特征空间中表示深度特征并加速认证任务,使用 PCA 和 LDA 进行降维。使用 MCCA 进行特征融合,使用 SVM 进行识别。使用公共数据集和自采集数据集评估系统的准确性和性能,准确率超过 99.5%。实验数据充分表明,该方法显著提高了身份识别的准确性。在未来,可以结合可穿戴设备的信号监测功能,快速识别出有异常情况的个体老年人,为老年人提供更安全、更高效的医疗服务,缓解医疗资源的压力。