Doppelg\"angers (or lookalikes) usually yield an increased probability of false matches in a facial recognition system, as opposed to random face image pairs selected for non-mated comparison trials. In this work, we assess the impact of doppelg\"angers on the HDA Doppelg\"anger and Disguised Faces in The Wild databases using a state-of-the-art face recognition system. It is found that doppelg\"anger image pairs yield very high similarity scores resulting in a significant increase of false match rates. Further, we propose a doppelg\"anger detection method which distinguishes doppelg\"angers from mated comparison trials by analysing differences in deep representations obtained from face image pairs. The proposed detection system employs a machine learning-based classifier, which is trained with generated doppelg\"anger image pairs utilising face morphing techniques. Experimental evaluations conducted on the HDA Doppelg\"anger and Look-Alike Face databases reveal a detection equal error rate of approximately 2.7% for the task of separating mated authentication attempts from doppelg\"angers.
翻译:Doppelg\\"anger\"angers(或外观者)通常会在面部识别系统中产生更多的假匹配概率,而不是随机的面部图像配对,为非色比较试验而选择的随机面部图像配对。在这项工作中,我们评估了Dopelg\"angers"对HDA Doppelg\"anger和"Driguized Faces"数据库的影响,使用了最先进的面部识别系统。发现Dopleg\"anger图像配对产生非常高的相似的分数,导致虚假匹配率大幅上升。此外,我们建议一种 doppleg\"anger检测方法,通过分析从脸部图像配对中获得的深度描述差异来区分 doppleg\"ang\"ang "ang "angs" 和 "ang-Look-Ang face数据库的检测差错率约为2.7%。