Face verification has come into increasing focus in various applications including the European Entry/Exit System, which integrates face recognition mechanisms. At the same time, the rapid advancement of biometric authentication requires extensive performance tests in order to inhibit the discriminatory treatment of travellers due to their demographic background. However, the use of face images collected as part of border controls is restricted by the European General Data Protection Law to be processed for no other reason than its original purpose. Therefore, this paper investigates the suitability of synthetic face images generated with StyleGAN and StyleGAN2 to compensate for the urgent lack of publicly available large-scale test data. Specifically, two deep learning-based (SER-FIQ, FaceQnet v1) and one standard-based (ISO/IEC TR 29794-5) face image quality assessment algorithm is utilized to compare the applicability of synthetic face images compared to real face images extracted from the FRGC dataset. Finally, based on the analysis of impostor score distributions and utility score distributions, our experiments reveal negligible differences between StyleGAN vs. StyleGAN2, and further also minor discrepancies compared to real face images.
翻译:在各种应用中,包括欧洲进出口系统(StempleGAN)和StyleGAN2(StyleGAN)产生的合成面部图象是否适宜,以弥补紧急缺乏公开的大规模测试数据。具体来说,两个基于深层次学习的图像(SER-FIQ,FaceQnet v1)和一个基于标准的图像质量评估算法(ISO/IEC TR 29794-5))被用来比较合成面部图象的可适用性与从FRGC数据集提取的真实面部图象的可比较性。最后,根据对冒牌分分布和实用分分布的分析,我们的实验发现StyGAN与StyleGAN2(s.StylegGAN2)之间的微小差异,以及与真实面图象的进一步差异。