Asano Takuma, Izumi Shintaro, Kawaguchi Hiroshi
Architecture Laboratory, Graduate School of Science, Technology and Innovation, Kobe University, Kobe, Japan.
Front Digit Health. 2025 Aug 21;7:1570144. doi: 10.3389/fdgth.2025.1570144. eCollection 2025.
Microwave Doppler sensors, capable of detecting minute physiological movements, enable the measurement of biometric information, such as walking patterns, heart rate, and respiration. Unlike fingerprint and facial recognition systems, they offer authentication without physical contact or privacy concerns. This study focuses on non-contact seismocardiography using microwave Doppler sensors and aims to apply this technology for biometric authentication.
We proposed a method for authenticating and identifying heartbeat signals through supervised learning using a conditional variational autoencoder (CVAE). A 60 GHz microwave Doppler sensor was used to capture heartbeat signals, which were processed using a conformer network to detect peaks and segment individual beats. High signal-to-noise ratio waveforms were selected, and time-frequency analysis extracted relevant features. Spectrograms labeled with subject data were input into the CVAE, which encoded subject-specific features into a latent space for authentication.
The proposed heartbeat-based authentication method, validated on 13 subjects, achieved an average balanced accuracy of 97.3% for authentication and an average accuracy of 94.7% for identification. Compared with conventional methods, this approach demonstrated superior performance by effectively encoding subject-specific features while mitigating noise-related challenges.
The proposed method enhanced the feasibility of non-contact heartbeat-based authentication by achieving high accuracy while addressing noise-related challenges. Its application could improve biometric security without compromising user privacy. Further advancements in handling posture variations and scalability are essential for real-world implementation.
微波多普勒传感器能够检测微小的生理运动,可用于测量生物特征信息,如行走模式、心率和呼吸。与指纹和面部识别系统不同,它们无需身体接触即可进行身份验证,也不存在隐私问题。本研究聚焦于使用微波多普勒传感器的非接触式心震描记术,并旨在将该技术应用于生物特征认证。
我们提出了一种通过使用条件变分自编码器(CVAE)进行监督学习来认证和识别心跳信号的方法。使用一个60GHz的微波多普勒传感器来采集心跳信号,这些信号通过一个适形网络进行处理,以检测峰值并分割各个心跳。选择高信噪比的波形,并通过时频分析提取相关特征。将标记有受试者数据的频谱图输入到CVAE中,该模型将受试者特定的特征编码到一个潜在空间中以进行认证。
所提出的基于心跳的认证方法在13名受试者上进行了验证,认证的平均平衡准确率达到97.3%,识别的平均准确率达到94.7%。与传统方法相比,该方法通过有效编码受试者特定特征并缓解与噪声相关的挑战,展现出了卓越的性能。
所提出的方法通过在解决与噪声相关挑战的同时实现高精度,提高了基于非接触心跳的认证的可行性。其应用可以在不损害用户隐私的情况下提高生物特征安全性。在处理姿势变化和可扩展性方面的进一步进展对于实际应用至关重要。