Yu Sungjin, Park Youngho
Electronics and Telecommunications Research Institute, Daejeon 34129, Republic of Korea.
School of Electronics and Electrical Engineering, Kyungpook National University, Daegu 41566, Republic of Korea.
Sensors (Basel). 2023 Jun 20;23(12):5747. doi: 10.3390/s23125747.
Wearable computing has garnered a lot of attention due to its various advantages, including automatic recognition and categorization of human actions from sensor data. However, wearable computing environments can be fragile to cyber security attacks since adversaries attempt to block, delete, or intercept the exchanged information via insecure communication channels. In addition to cyber security attacks, wearable sensor devices cannot resist physical threats since they are batched in unattended circumstances. Furthermore, existing schemes are not suited for resource-constrained wearable sensor devices with regard to communication and computational costs and are inefficient regarding the verification of multiple sensor devices simultaneously. Thus, we designed an efficient and robust authentication and group-proof scheme using physical unclonable functions (PUFs) for wearable computing, denoted as AGPS-PUFs, to provide high-security and cost-effective efficiency compared to the previous schemes. We evaluated the security of the AGPS-PUF using a formal security analysis, including the ROR Oracle model and AVISPA. We carried out the testbed experiments using MIRACL on Raspberry PI4 and then presented a comparative analysis of the performance between the AGPS-PUF scheme and the previous schemes. Consequently, the AGPS-PUF offers superior security and efficiency than existing schemes and can be applied to practical wearable computing environments.
可穿戴计算因其诸多优势而备受关注,这些优势包括从传感器数据中自动识别和分类人类行为。然而,可穿戴计算环境可能容易受到网络安全攻击,因为攻击者试图通过不安全的通信渠道阻止、删除或拦截交换的信息。除了网络安全攻击外,可穿戴传感器设备在无人值守的情况下无法抵御物理威胁。此外,现有方案在通信和计算成本方面不适用于资源受限的可穿戴传感器设备,并且在同时验证多个传感器设备方面效率低下。因此,我们为可穿戴计算设计了一种使用物理不可克隆函数(PUF)的高效且健壮的认证和群组证明方案,称为AGPS-PUFs,与先前的方案相比,它能提供高安全性和高性价比。我们使用包括ROR Oracle模型和AVISPA在内的形式化安全分析来评估AGPS-PUF的安全性。我们在Raspberry PI4上使用MIRACL进行了测试平台实验,然后对AGPS-PUF方案与先前方案的性能进行了对比分析。结果表明,AGPS-PUF比现有方案具有更高的安全性和效率,并且可以应用于实际的可穿戴计算环境。