Kang Youngshin, Yang Geunbo, Eom Heesang, Han Seungwoo, Baek Suwhan, Noh Seungil, Shin Youngjoo, Park Cheolsoo
Department of Computer Engineering, Kwangwoon University, Seoul, KR 01897 Republic of Korea.
Department of Intelligent Information System and Embedded Software Engineering, Kwangwoon University, Seoul, KR 01897 Republic of Korea.
Biomed Eng Lett. 2023 Mar 24;13(2):197-207. doi: 10.1007/s13534-023-00266-y. eCollection 2023 May.
Various biometrics such as the face, irises, and fingerprints, which can be obtained in a relatively simple way in modern society, are used in personal authentication systems to identify individuals. These biometric data are extracted from an individual's physiological data and yield high performance in identifying an individual using unique data patterns. Biometric identification is also used in portable devices such as mobile devices because it is more secure than cryptographic token-based authentication methods. However, physiological data could include personal health information such as arrhythmia related patterns in electrocardiogram (ECG) signals. To protect sensitive health information from hackers, the biomarkers of certain diseases or disorders that exist in ECG signals need to be hidden. Additionally, to implement the inference models for both arrhythmia detection and personal authentication in a mobile device, a lightweight model such as a multi-task deep learning model should be considered. This study demonstrates a multi-task neural network model that simultaneously identifies an individual's ECG and arrhythmia patterns using a small network. Finally, the computational efficiency and model size of the single-task and multi-task models were compared based on the number of parameters. Although the multi-task model has 20,000 fewer parameters than the single-task model, they yielded similar performance, which demonstrates the efficient structure of the multi-task model.
在现代社会中,可以通过相对简单的方式获取的各种生物特征识别技术,如面部、虹膜和指纹,被用于个人身份验证系统来识别个体。这些生物特征数据从个体的生理数据中提取,并利用独特的数据模式在识别个体方面具有高性能。生物特征识别也用于诸如移动设备等便携式设备,因为它比基于加密令牌的身份验证方法更安全。然而,生理数据可能包括个人健康信息,如心电图(ECG)信号中的心律失常相关模式。为了保护敏感的健康信息不被黑客获取,需要隐藏心电图信号中存在的某些疾病或紊乱的生物标志物。此外,为了在移动设备中实现心律失常检测和个人身份验证的推理模型,应考虑使用诸如多任务深度学习模型等轻量级模型。本研究展示了一种多任务神经网络模型,该模型使用一个小型网络同时识别个体的心电图和心律失常模式。最后,基于参数数量比较了单任务模型和多任务模型的计算效率和模型大小。尽管多任务模型比单任务模型少20,000个参数,但它们产生了相似的性能,这证明了多任务模型的高效结构。