Human expertise for recognizing unfamiliar faces has recently been called into question, highlighting a deficit when compared to familiar face recognition. We present simulations of a fixed-architecture deep convolutional neural network (DCNN) with different training regimens, highlighting the extent to which learning to recognize many "familiar" faces allows for robust, but incomplete, generalization to new "unfamiliar" faces as compared to performance after familiarization. With some training, verification performance for previously unfamiliar faces improves modestly, but the performance difference between unfamiliar and familiar faces is much smaller than the performance boost from pre-training on faces as compared to objects in the ImageNet 1000-way image classification database. We also assess the generalization performance of our networks to other fine-grained visual tasks such as bird species and car model verification. We find that expert face recognition does not improve generalization to birds or cars compared to a network trained on a subset of ImageNet with all vehicles and birds removed. We conclude that the specific learned statistics within a domain of visual expertise determine its generalization to other domains, in contrast with domain-general accounts which highlight level of processing over domain-specific statistics.
[1]
A. Young,et al.
Are We Face Experts?
,
2018,
Trends in Cognitive Sciences.
[2]
Andrew W. Young,et al.
The limits of expertise in face recognition : Response to Mackenzie Sunday and Isabel Gauthier: Face expertise for unfamiliar faces: A commentary on Young and Burton’s “Are we Face Experts?"
,
2018
.
[3]
Matthew H Tong,et al.
Why is the fusiform face area recruited for novel categories of expertise? A neurocomputational investigation
,
2008,
Brain Research.
[4]
Marwan Mattar,et al.
Labeled Faces in the Wild: A Database forStudying Face Recognition in Unconstrained Environments
,
2008
.
[5]
Bruno Rossion,et al.
Humans Are Visual Experts at Unfamiliar Face Recognition
,
2018,
Trends in Cognitive Sciences.
[6]
A. Young,et al.
Understanding face familiarity
,
2018,
Cognition.
[7]
Honglak Lee,et al.
Learning to Align from Scratch
,
2012,
NIPS.
[8]
Ahmed M. Megreya,et al.
Unfamiliar faces are not faces: Evidence from a matching task
,
2006,
Memory & cognition.
[9]
Luca Antiga,et al.
Automatic differentiation in PyTorch
,
2017
.