论文标题
另一场比赛对面对变形攻击的易感性的影响
The Influence of the Other-Race Effect on Susceptibility to Face Morphing Attacks
论文作者
论文摘要
在两个身份之间产生的面部变形类似于用来创造变形的两个面。因此,人类和机器很容易误认为用两个身份制成的变形,用于创造变形的任何一个面孔。在安全场景中的“变形攻击”中,这种漏洞已被利用。在这里,我们询问“其他种族效应”(矿石)是否(识别自己的面孔与其他赛车面孔的人类优势)是否加剧了对人类的攻击敏感性。我们还询问了深度卷积神经网络(DCNN)中的面部识别表现是否受到变形脸种族的影响。高加索人(CA)和东亚洲(EA)参与者在两个条件下在CA和EA面上进行了面对面的匹配任务。在变形条件下,不同的身份对由身份“ A”的图像和50/50的形象组成,在身份图像“ A”和“ B”之间。在基线条件下,不同身份的形态从未出现。正如预期的那样,与原始面部图像相比,错误的识别频率更高。此外,与EA面(部分矿石)相比,CA参与者对CA面展示了优势。首先,交叉面孔的形态识别要比自有赛车面孔要差得多。与人类类似,DCNN对原始面部图像的性能比对变形的图像对更准确。值得注意的是,在两种情况下,深层网络都比人类更准确。结果表明,DCNNS可能在提高面部时提高面部识别精度有用。它们还表明了矿石在应用设置中变形攻击敏感性中的重要性。
Facial morphs created between two identities resemble both of the faces used to create the morph. Consequently, humans and machines are prone to mistake morphs made from two identities for either of the faces used to create the morph. This vulnerability has been exploited in "morph attacks" in security scenarios. Here, we asked whether the "other-race effect" (ORE) -- the human advantage for identifying own- vs. other-race faces -- exacerbates morph attack susceptibility for humans. We also asked whether face-identification performance in a deep convolutional neural network (DCNN) is affected by the race of morphed faces. Caucasian (CA) and East-Asian (EA) participants performed a face-identity matching task on pairs of CA and EA face images in two conditions. In the morph condition, different-identity pairs consisted of an image of identity "A" and a 50/50 morph between images of identity "A" and "B". In the baseline condition, morphs of different identities never appeared. As expected, morphs were identified mistakenly more often than original face images. Moreover, CA participants showed an advantage for CA faces in comparison to EA faces (a partial ORE). Of primary interest, morph identification was substantially worse for cross-race faces than for own-race faces. Similar to humans, the DCNN performed more accurately for original face images than for morphed image pairs. Notably, the deep network proved substantially more accurate than humans in both cases. The results point to the possibility that DCNNs might be useful for improving face identification accuracy when morphed faces are presented. They also indicate the significance of the ORE in morph attack susceptibility in applied settings.