A specialized face-processing network consistent with the representational geometry of monkey face patches
Amirhossein Farzmahdi, Karim Rajaei, Masoud Ghodrati, Reza, Ebrahimpour, Seyed-Mahdi Khaligh-Razavi

TL;DR
This paper presents a hierarchical computational model of primate face processing that aligns with neural data from monkey face patches and reproduces key face recognition phenomena.
Contribution
The authors develop a biologically plausible hierarchical model that matches neural representations and explains multiple face processing effects observed in primates.
Findings
Model's last layers resemble neural activity in monkey face patches
Automatically reproduces face inversion and composite face effects
Achieves high performance aligning with biological data
Abstract
Ample evidence suggests that face processing in human and non-human primates is performed differently compared with other objects. Converging reports, both physiologically and psychophysically, indicate that faces are processed in specialized neural networks in the brain -i.e. face patches in monkeys and the fusiform face area (FFA) in humans. We are all expert face-processing agents, and able to identify very subtle differences within the category of faces, despite substantial visual and featural similarities. Identification is performed rapidly and accurately after viewing a whole face, while significantly drops if some of the face configurations (e.g. inversion, misalignment) are manipulated or if partial views of faces are shown due to occlusion. This refers to a hotly-debated, yet highly-supported concept, known as holistic face processing. We built a hierarchical computational…
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Taxonomy
TopicsFace Recognition and Perception · Face recognition and analysis · Visual Attention and Saliency Detection
