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Emerged human-like facial expression representation in a deep convolutional neural network

Liqin Zhou, Anmin Yang, Ming Meng, Ke Zhou

2022Science Advances28 citationsDOIOpen Access PDF

Abstract

Recent studies found that the deep convolutional neural networks (DCNNs) trained to recognize facial identities spontaneously learned features that support facial expression recognition, and vice versa. Here, we showed that the self-emerged expression-selective units in a VGG-Face trained for facial identification were tuned to distinct basic expressions and, importantly, exhibited hallmarks of human expression recognition (i.e., facial expression confusion and categorical perception). We then investigated whether the emergence of expression-selective units is attributed to either face-specific experience or domain-general processing by conducting the same analysis on a VGG-16 trained for object classification and an untrained VGG-Face without any visual experience, both having the identical architecture with the pretrained VGG-Face. Although similar expression-selective units were found in both DCNNs, they did not exhibit reliable human-like characteristics of facial expression perception. Together, these findings revealed the necessity of domain-specific visual experience of face identity for the development of facial expression perception, highlighting the contribution of nurture to form human-like facial expression perception.

Topics & Concepts

Convolutional neural networkFacial expressionExpression (computer science)PerceptionComputer scienceFace perceptionPattern recognition (psychology)Artificial intelligenceFace (sociological concept)Facial expression recognitionFacial recognition systemPsychologyCognitive psychologyNeuroscienceSociologySocial scienceProgramming languageFace Recognition and PerceptionFace recognition and analysisFace and Expression Recognition
Emerged human-like facial expression representation in a deep convolutional neural network | Litcius