Literature DB >> 34348035

Face Recognition by Humans and Machines: Three Fundamental Advances from Deep Learning.

Alice J O'Toole1, Carlos D Castillo2.   

Abstract

Deep learning models currently achieve human levels of performance on real-world face recognition tasks. We review scientific progress in understanding human face processing using computational approaches based on deep learning. This review is organized around three fundamental advances. First, deep networks trained for face identification generate a representation that retains structured information about the face (e.g., identity, demographics, appearance, social traits, expression) and the input image (e.g., viewpoint, illumination). This forces us to rethink the universe of possible solutions to the problem of inverse optics in vision. Second, deep learning models indicate that high-level visual representations of faces cannot be understood in terms of interpretable features. This has implications for understanding neural tuning and population coding in the high-level visual cortex. Third, learning in deep networks is a multistep process that forces theoretical consideration of diverse categories of learning that can overlap, accumulate over time, and interact. Diverse learning types are needed to model the development of human face processing skills, cross-race effects, and familiarity with individual faces.

Entities:  

Keywords:  cross-race effects; deep convolutional networks; face recognition; face space; facial features; human learning; machine learning

Mesh:

Year:  2021        PMID: 34348035      PMCID: PMC8721510          DOI: 10.1146/annurev-vision-093019-111701

Source DB:  PubMed          Journal:  Annu Rev Vis Sci        ISSN: 2374-4642            Impact factor:   7.745


  79 in total

1.  Reversibility of the other-race effect in face recognition during childhood.

Authors:  S Sangrigoli; C Pallier; A-M Argenti; V A G Ventureyra; S de Schonen
Journal:  Psychol Sci       Date:  2005-06

2.  Faces in early visual environments are persistent not just frequent.

Authors:  Swapnaa Jayaraman; Linda B Smith
Journal:  Vision Res       Date:  2018-06-20       Impact factor: 1.886

3.  Accuracy comparison across face recognition algorithms: Where are we on measuring race bias?

Authors:  Jacqueline G Cavazos; P Jonathon Phillips; Carlos D Castillo; Alice J O'Toole
Journal:  IEEE Trans Biom Behav Identity Sci       Date:  2020-09-29

Review 4.  Face Space Representations in Deep Convolutional Neural Networks.

Authors:  Alice J O'Toole; Carlos D Castillo; Connor J Parde; Matthew Q Hill; Rama Chellappa
Journal:  Trends Cogn Sci       Date:  2018-08-07       Impact factor: 20.229

5.  Deliberate disguise in face identification.

Authors:  Eilidh Noyes; Rob Jenkins
Journal:  J Exp Psychol Appl       Date:  2019-02-07

Review 6.  Automated face recognition in forensic science: Review and perspectives.

Authors:  Maëlig Jacquet; Christophe Champod
Journal:  Forensic Sci Int       Date:  2019-12-23       Impact factor: 2.395

7.  A face feature space in the macaque temporal lobe.

Authors:  Winrich A Freiwald; Doris Y Tsao; Margaret S Livingstone
Journal:  Nat Neurosci       Date:  2009-08-09       Impact factor: 24.884

8.  Learning to Read Increases the Informativeness of Distributed Ventral Temporal Responses.

Authors:  Marisa Nordt; Jesse Gomez; Vaidehi Natu; Brianna Jeska; Michael Barnett; Kalanit Grill-Spector
Journal:  Cereb Cortex       Date:  2019-07-05       Impact factor: 5.357

9.  Understanding face recognition.

Authors:  V Bruce; A Young
Journal:  Br J Psychol       Date:  1986-08

10.  Learning faces from variability.

Authors:  Kay L Ritchie; A Mike Burton
Journal:  Q J Exp Psychol (Hove)       Date:  2016-03-07       Impact factor: 2.143

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