The problem of distinguishing identical twins and non-twin look-alikes in automated facial recognition (FR) applications has become increasingly important with the widespread adoption of facial biometrics. Due to the high facial similarity of both identical twins and look-alikes, these face pairs represent the hardest cases presented to facial recognition tools. This work presents an application of one of the largest twin datasets compiled to date to address two FR challenges: 1) determining a baseline measure of facial similarity between identical twins and 2) applying this similarity measure to determine the impact of doppelgangers, or look-alikes, on FR performance for large face datasets. The facial similarity measure is determined via a deep convolutional neural network. This network is trained on a tailored verification task designed to encourage the network to group together highly similar face pairs in the embedding space and achieves a test AUC of 0.9799. The proposed network provides a quantitative similarity score for any two given faces and has been applied to large-scale face datasets to identify similar face pairs. An additional analysis which correlates the comparison score returned by a facial recognition tool and the similarity score returned by the proposed network has also been performed.
翻译:在自动面部识别(FR)应用中,区分双胞胎和非双双双相相貌相似情况的问题随着面部生物鉴别学的广泛采用而变得日益重要。由于面部相貌相似的双胞胎和相貌相似者的面部高度相似性,这些对脸部相配是面部识别工具中最难处理的案例。这项工作是应用迄今为止为应对两种FR挑战而汇编的最大双数据集之一:1)确定相同双胞胎之间面部相似性的基线测量,2)应用这种相似性测量来确定二重身或相貌相似性对大型脸部数据集性能的影响。面部相似性度测量通过深相交神经网络确定。这一网络接受专门设计的核查任务培训,目的是鼓励网络在嵌入空间将非常相似的对面组组合,并获得一个0.9799的AUC测试。拟议网络为任何两种特定面部提供了数量相似性评分,并应用大型面部相像测,以识别相似的面部相配。还进行了与通过面部识别工具返回的比较得分相关的额外分析,还进行了拟议网络返回的类似评分。