Challenging the Classical View: Recognition of Identity and Expression As Integrated Processes
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Recent neuroimaging evidence challenges the classical view that face identity and facial expression are processed by segregated neural pathways, showing that information about identity and expression are encoded within common brain regions. This article tests the hypothesis that integrated representations of identity and expression arise spontaneously within deep neural networks. A subset of the CelebA dataset is used to train a deep convolutional neural network (DCNN) to label face identity (chance = 0.06%, accuracy = 26.5%), and the FER2013 dataset is used to train a DCNN to label facial expression (chance = 14.2%, accuracy = 63.5%). The identity-trained and expression-trained networks each successfully transfer to labeling both face identity and facial expression on the Karolinska Directed Emotional Faces dataset. This study demonstrates that DCNNs trained to recognize face identity and DCNNs trained to recognize facial expression spontaneously develop representations of facial expression and face identity, respectively. Furthermore, a congruence coefficient analysis reveals that features distinguishing between identities and features distinguishing between expressions become increasingly orthogonal from layer to layer, suggesting that deep neural networks disentangle representational subspaces corresponding to different sources.
Human Recognition: The Utilization of Face, Voice, Name and Interactions-An Extended Editorial.
Gainotti G Brain Sci. 2024; 14(4).
PMID: 38671996 PMC: 11048321. DOI: 10.3390/brainsci14040345.
Schwartz E, Alreja A, Richardson R, Ghuman A, Anzellotti S J Neurosci. 2023; 43(23):4291-4303.
PMID: 37142430 PMC: 10255163. DOI: 10.1523/JNEUROSCI.1277-22.2023.
Emerged human-like facial expression representation in a deep convolutional neural network.
Zhou L, Yang A, Meng M, Zhou K Sci Adv. 2022; 8(12):eabj4383.
PMID: 35319988 PMC: 8942361. DOI: 10.1126/sciadv.abj4383.