Twin identification over viewpoint change: A deep convolutional neural network surpasses humans
Connor J. Parde, Virginia E. Strehle, Vivekjyoti Banerjee, Ying Hu,, Jacqueline G. Cavazos, Carlos D. Castillo, Alice J. O'Toole

TL;DR
This study compares human and deep convolutional neural network performance in face identification involving identical twins across different viewpoints, revealing that the DCNN often surpasses humans and shares similar face similarity perceptions.
Contribution
It demonstrates that a DCNN can outperform humans in challenging face discrimination tasks involving twins and shows a significant correlation in face similarity judgments between humans and the model.
Findings
DCNN performance matches or exceeds human accuracy in twin face discrimination.
Accuracy declines with increased viewpoint disparity for both humans and the DCNN.
Significant correlation between human and machine face similarity ratings in multiple conditions.
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 imposter pairs (different identities from similar demographic groups), and twin imposter pairs (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-imposters and general imposters was assessed in each viewpoint-disparity…
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Taxonomy
TopicsFace Recognition and Perception · Face recognition and analysis · Evolutionary Psychology and Human Behavior
MethodsDiffusion-Convolutional Neural Networks
