Department of Computer Science, University of Bari Aldo Moro, 70125 Bari, Italy.
Sensors (Basel). 2023 Dec 19;24(1):24. doi: 10.3390/s24010024.
Human activity recognition (HAR) through gait analysis is a very promising research area for early detection of neurodegenerative diseases because gait abnormalities are typical symptoms of some neurodegenerative diseases, such as early dementia. While working with such biometric data, the performance parameters must be considered along with privacy and security issues. In other words, such biometric data should be processed under specific security and privacy requirements. This work proposes an innovative hybrid protection scheme combining a partially homomorphic encryption scheme and a cancelable biometric technique based on random projection to protect gait features, ensuring patient privacy according to ISO/IEC 24745. The proposed hybrid protection scheme has been implemented along a long short-term memory (LSTM) neural network to realize a secure early dementia diagnosis system. The proposed protection scheme is scalable and implementable with any type of neural network because it is independent of the network's architecture. The conducted experiments demonstrate that the proposed protection scheme enables a high trade-off between safety and performance. The accuracy degradation is at most 1.20% compared with the early dementia recognition system without the protection scheme. Moreover, security and computational analyses of the proposed scheme have been conducted and reported.
通过步态分析进行人体活动识别 (HAR) 是早期检测神经退行性疾病的一个非常有前途的研究领域,因为步态异常是一些神经退行性疾病的典型症状,如早期痴呆。在处理此类生物识别数据时,必须考虑性能参数以及隐私和安全问题。换句话说,此类生物识别数据应在特定的安全和隐私要求下进行处理。本工作提出了一种创新的混合保护方案,该方案结合了部分同态加密方案和基于随机投影的可撤销生物识别技术,以保护步态特征,根据 ISO/IEC 24745 确保患者隐私。所提出的混合保护方案已沿着长短期记忆 (LSTM) 神经网络实施,以实现安全的早期痴呆诊断系统。所提出的保护方案是可扩展的,并且可以与任何类型的神经网络一起实现,因为它独立于网络的架构。所进行的实验表明,所提出的保护方案在安全性和性能之间实现了很好的权衡。与没有保护方案的早期痴呆识别系统相比,精度下降最多为 1.20%。此外,还对所提出方案的安全性和计算分析进行了报告。