Applications of face recognition systems for authentication purposes are growing rapidly. Although state-of-the-art (SOTA) face recognition systems have high recognition performance, the features which are extracted for each user and are stored in the system's database contain privacy-sensitive information. Accordingly, compromising this data would jeopardize users' privacy. In this paper, we propose a new cancelable template protection method, dubbed MLP-hash, which generates protected templates by passing the extracted features through a user-specific randomly-weighted multi-layer perceptron (MLP) and binarizing the MLP output. We evaluated the unlinkability, irreversibility, and recognition performance of our proposed biometric template protection method to fulfill the ISO/IEC 30136 standard requirements. Our experiments with SOTA face recognition systems on the MOBIO and LFW datasets show that our method has competitive performance with the BioHashing and IoM Hashing (IoM-GRP and IoM-URP) template protection algorithms. We provide an open-source implementation of all the experiments presented in this paper so that other researchers can verify our findings and build upon our work.
翻译:虽然最先进的多层分辨系统(SOTA)的识别性能很高,但我们评估了我们拟议的生物鉴别模板保护方法的不可连接性、不可逆转性和识别性,以达到ISO/IEC 30136标准要求。我们与SOTA进行的实验在MOBIO和LFW数据集上面对识别系统,表明我们的方法具有与BioHashing和IoM Hashing(IoM-GRP和IoM-URP)模板保护算法的竞争性性能。我们提供了本文中介绍的所有实验的公开来源实施情况,以便其他研究人员能够核查我们的调查结果,并在我们的工作基础上建立我们的工作。