Twin identification over viewpoint change: A deep convolutional neural network surpasses humans

IF 1.9 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Connor J. Parde, Virginia E. Strehle, Vivekjyoti Banerjee, Ying Hu, Jacqueline G. Cavazos, Carlos D. Castillo, Alice J. O’Toole
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Abstract

Deep convolutional neural networks (DCNNs) have achieved human-level accuracy in face identification (Phillips et al., 2018), though it is unclear how accurately they discriminate highly-similar faces. Here, humans and a DCNN performed a challenging face-identity matching task that included identical twins. Participants (N = 87) viewed pairs of face images of three types: same-identity, general imposters (different identities from similar demographic groups), and twin imposters (identical twin siblings). The task was to determine whether the pairs showed the same person or different people. Identity comparisons were tested in three viewpoint-disparity conditions: frontal to frontal, frontal to 45-degree profile, and frontal to 90-degree-profile. Accuracy for discriminating matched-identity pairs from twin-imposter pairs and general imposter pairs was assessed in each viewpoint-disparity condition. Humans were more accurate for general-imposter pairs than twin-imposter pairs, and accuracy declined with increased viewpoint disparity between the images in a pair. A DCNN trained for face identification (Ranjan et al., 2018) was tested on the same image pairs presented to humans. Machine performance mirrored the pattern of human accuracy, but with performance at or above all humans in all but one condition. Human and machine similarity scores were compared across all image-pair types. This item-level analysis showed that human and machine similarity ratings correlated significantly in six of nine image-pair types [range r = 0.38 to r = 0.63], suggesting general accord between the perception of face similarity by humans and the DCNN. These findings also contribute to our understanding of DCNN performance for discriminating high-resemblance faces, demonstrate that the DCNN performs at a level at or above humans, and suggest a degree of parity between the features used by humans and the DCNN.

超越视点变化的孪生识别:深度卷积神经网络超越人类
深度卷积神经网络(DCNNs)在人脸识别方面已经达到了人类水平的准确性(Phillips等人,2018),尽管尚不清楚它们区分高度相似的人脸的准确性。在这里,人类和DCNN进行了一项具有挑战性的面部识别匹配任务,其中包括同卵双胞胎。参与者(N = 87)观看了三种类型的成对面部图像:同一身份,一般冒名顶替者(来自相似人口群体的不同身份)和双胞胎冒名顶替者(同卵双胞胎兄弟姐妹)。他们的任务是确定这两组照片显示的是同一个人还是不同的人。在三种视点差异条件下进行身份比较测试:正面到正面,正面到45度侧面,正面到90度侧面。在每个视点视差条件下,评估了区分匹配身份对与双胞胎冒名顶替者对和一般冒名顶替者对的准确性。人类对普通的冒名顶替者比对双胞胎的冒名顶替者更准确,而且准确率随着一对图像之间视点差异的增加而下降。训练用于人脸识别的DCNN (Ranjan et al., 2018)在呈现给人类的相同图像对上进行了测试。机器的表现反映了人类的准确性模式,但在除一种情况外的所有情况下,机器的表现都达到或超过了人类。在所有图像对类型中比较人类和机器的相似性得分。这项项目水平的分析表明,在9种图像对类型中,人类和机器的相似性评级在6种类型中显著相关[范围r = 0.38至r = 0.63],表明人类对面部相似性的感知与DCNN大致一致。这些发现也有助于我们理解DCNN在识别高相似度面孔方面的表现,表明DCNN的表现达到或超过人类的水平,并表明人类和DCNN使用的特征之间存在一定程度的平等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACM Transactions on Applied Perception
ACM Transactions on Applied Perception 工程技术-计算机:软件工程
CiteScore
3.70
自引率
0.00%
发文量
22
审稿时长
12 months
期刊介绍: ACM Transactions on Applied Perception (TAP) aims to strengthen the synergy between computer science and psychology/perception by publishing top quality papers that help to unify research in these fields. The journal publishes inter-disciplinary research of significant and lasting value in any topic area that spans both Computer Science and Perceptual Psychology. All papers must incorporate both perceptual and computer science components.
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