Literature DB >> 33592392

Seeing through disguise: Getting to know you with a deep convolutional neural network.

Eilidh Noyes1, Connor J Parde2, Y Ivette Colón2, Matthew Q Hill2, Carlos D Castillo3, Rob Jenkins4, Alice J O'Toole2.   

Abstract

People use disguise to look unlike themselves (evasion) or to look like someone else (impersonation). Evasion disguise challenges human ability to see an identity across variable images; Impersonation challenges human ability to tell people apart. Personal familiarity with an individual face helps humans to see through disguise. Here we propose a model of familiarity based on high-level visual learning mechanisms that we tested using a deep convolutional neural network (DCNN) trained for face identification. DCNNs generate a face space in which identities and images co-exist in a unified computational framework, that is categorically structured around identity, rather than retinotopy. This allows for simultaneous manipulation of mechanisms that contrast identities and cluster images. In Experiment 1, we measured the DCNN's baseline accuracy (unfamiliar condition) for identification of faces in no disguise and disguise conditions. Disguise affected DCNN performance in much the same way it affects human performance for unfamiliar faces in disguise (cf. Noyes & Jenkins, 2019). In Experiment 2, we simulated familiarity for individual identities by averaging the DCNN-generated representations from multiple images of each identity. Averaging improved DCNN recognition of faces in evasion disguise, but reduced the ability of the DCNN to differentiate identities of similar appearance. In Experiment 3, we implemented a contrast learning technique to simultaneously teach the DCNN appearance variation and identity contrasts between different individuals. This facilitated identification with both evasion and impersonation disguise. Familiar face recognition requires an ability to group images of the same identity together and separate different identities. The deep network provides a high-level visual representation for face recognition that supports both of these mechanisms of face learning simultaneously.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Disguise; Face recognition; Machine learning

Mesh:

Year:  2021        PMID: 33592392      PMCID: PMC8771251          DOI: 10.1016/j.cognition.2021.104611

Source DB:  PubMed          Journal:  Cognition        ISSN: 0010-0277


  37 in total

1.  The Glasgow Face Matching Test.

Authors:  A Mike Burton; David White; Allan McNeill
Journal:  Behav Res Methods       Date:  2010-02

2.  Face learning with multiple images leads to fast acquisition of familiarity for specific individuals.

Authors:  A J Dowsett; A Sandford; A Mike Burton
Journal:  Q J Exp Psychol (Hove)       Date:  2015-03-13       Impact factor: 2.143

3.  Camera-to-subject distance affects face configuration and perceived identity.

Authors:  Eilidh Noyes; Rob Jenkins
Journal:  Cognition       Date:  2017-05-17

4.  Humans Are Visual Experts at Unfamiliar Face Recognition.

Authors:  Bruno Rossion
Journal:  Trends Cogn Sci       Date:  2018-06       Impact factor: 20.229

5.  Viewers extract the mean from images of the same person: A route to face learning.

Authors:  Robin S S Kramer; Kay L Ritchie; A Mike Burton
Journal:  J Vis       Date:  2015       Impact factor: 2.240

6.  Configurational information in face perception.

Authors:  A W Young; D Hellawell; D C Hay
Journal:  Perception       Date:  1987       Impact factor: 1.490

7.  Understanding face familiarity.

Authors:  Robin S S Kramer; Andrew W Young; A Mike Burton
Journal:  Cognition       Date:  2017-12-09

8.  Telling faces together: Learning new faces through exposure to multiple instances.

Authors:  Sally Andrews; Rob Jenkins; Heather Cursiter; A Mike Burton
Journal:  Q J Exp Psychol (Hove)       Date:  2015-02-17       Impact factor: 2.143

9.  Simultaneous presentation of similar stimuli produces perceptual learning in human picture processing.

Authors:  M E Mundy; R C Honey; Dominic M Dwyer
Journal:  J Exp Psychol Anim Behav Process       Date:  2007-04

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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  2 in total

Review 1.  Face Recognition by Humans and Machines: Three Fundamental Advances from Deep Learning.

Authors:  Alice J O'Toole; Carlos D Castillo
Journal:  Annu Rev Vis Sci       Date:  2021-08-04       Impact factor: 7.745

2.  What happens to our representation of identity as familiar faces age? Evidence from priming and identity aftereffects.

Authors:  Sarah Laurence; Kristen A Baker; Valentina M Proietti; Catherine J Mondloch
Journal:  Br J Psychol       Date:  2022-03-11
  2 in total

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