Literature DB >> 33724362

Five points to check when comparing visual perception in humans and machines.

Christina M Funke1,2, Judy Borowski1,3, Karolina Stosio1,4,5,6, Wieland Brendel1,4,7,8, Thomas S A Wallis1,9,10, Matthias Bethge1,4,7,11.   

Abstract

With the rise of machines to human-level performance in complex recognition tasks, a growing amount of work is directed toward comparing information processing in humans and machines. These studies are an exciting chance to learn about one system by studying the other. Here, we propose ideas on how to design, conduct, and interpret experiments such that they adequately support the investigation of mechanisms when comparing human and machine perception. We demonstrate and apply these ideas through three case studies. The first case study shows how human bias can affect the interpretation of results and that several analytic tools can help to overcome this human reference point. In the second case study, we highlight the difference between necessary and sufficient mechanisms in visual reasoning tasks. Thereby, we show that contrary to previous suggestions, feedback mechanisms might not be necessary for the tasks in question. The third case study highlights the importance of aligning experimental conditions. We find that a previously observed difference in object recognition does not hold when adapting the experiment to make conditions more equitable between humans and machines. In presenting a checklist for comparative studies of visual reasoning in humans and machines, we hope to highlight how to overcome potential pitfalls in design and inference.

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Mesh:

Year:  2021        PMID: 33724362      PMCID: PMC7980041          DOI: 10.1167/jov.21.3.16

Source DB:  PubMed          Journal:  J Vis        ISSN: 1534-7362            Impact factor:   2.240


  37 in total

1.  Spatial and temporal properties of illusory contours and amodal boundary completion.

Authors:  D L Ringach; R Shapley
Journal:  Vision Res       Date:  1996-10       Impact factor: 1.886

Review 2.  Deep Learning: The Good, the Bad, and the Ugly.

Authors:  Thomas Serre
Journal:  Annu Rev Vis Sci       Date:  2019-08-08       Impact factor: 6.422

Review 3.  Deep Neural Networks as Scientific Models.

Authors:  Radoslaw M Cichy; Daniel Kaiser
Journal:  Trends Cogn Sci       Date:  2019-02-19       Impact factor: 20.229

4.  The effect of contour closure on the rapid discrimination of two-dimensional shapes.

Authors:  J Elder; S Zucker
Journal:  Vision Res       Date:  1993-05       Impact factor: 1.886

5.  A closed curve is much more than an incomplete one: effect of closure in figure-ground segmentation.

Authors:  I Kovács; B Julesz
Journal:  Proc Natl Acad Sci U S A       Date:  1993-08-15       Impact factor: 11.205

6.  Functional brain imaging of the Rotating Snakes illusion by fMRI.

Authors:  Ichiro Kuriki; Hiroshi Ashida; Ikuya Murakami; Akiyoshi Kitaoka
Journal:  J Vis       Date:  2008-12-30       Impact factor: 2.240

7.  Neural basis for a powerful static motion illusion.

Authors:  Bevil R Conway; Akiyoshi Kitaoka; Arash Yazdanbakhsh; Christopher C Pack; Margaret S Livingstone
Journal:  J Neurosci       Date:  2005-06-08       Impact factor: 6.709

8.  Deep supervised, but not unsupervised, models may explain IT cortical representation.

Authors:  Seyed-Mahdi Khaligh-Razavi; Nikolaus Kriegeskorte
Journal:  PLoS Comput Biol       Date:  2014-11-06       Impact factor: 4.475

9.  Illusory Motion Reproduced by Deep Neural Networks Trained for Prediction.

Authors:  Eiji Watanabe; Akiyoshi Kitaoka; Kiwako Sakamoto; Masaki Yasugi; Kenta Tanaka
Journal:  Front Psychol       Date:  2018-03-15

10.  Deep learning-Using machine learning to study biological vision.

Authors:  Najib J Majaj; Denis G Pelli
Journal:  J Vis       Date:  2018-12-03       Impact factor: 2.240

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  10 in total

1.  Could simplified stimuli change how the brain performs visual search tasks? A deep neural network study.

Authors:  David A Nicholson; Astrid A Prinz
Journal:  J Vis       Date:  2022-06-01       Impact factor: 2.004

2.  On the synthesis of visual illusions using deep generative models.

Authors:  Alex Gomez-Villa; Adrián Martín; Javier Vazquez-Corral; Marcelo Bertalmío; Jesús Malo
Journal:  J Vis       Date:  2022-07-11       Impact factor: 2.004

3.  Noise increases the correspondence between artificial and human vision.

Authors:  Jessica A F Thompson
Journal:  PLoS Biol       Date:  2021-12-10       Impact factor: 8.029

4.  Differences between human and machine perception in medical diagnosis.

Authors:  Taro Makino; Stanisław Jastrzębski; Witold Oleszkiewicz; Celin Chacko; Robin Ehrenpreis; Naziya Samreen; Chloe Chhor; Eric Kim; Jiyon Lee; Kristine Pysarenko; Beatriu Reig; Hildegard Toth; Divya Awal; Linda Du; Alice Kim; James Park; Daniel K Sodickson; Laura Heacock; Linda Moy; Kyunghyun Cho; Krzysztof J Geras
Journal:  Sci Rep       Date:  2022-04-27       Impact factor: 4.996

5.  Can deep convolutional neural networks support relational reasoning in the same-different task?

Authors:  Guillermo Puebla; Jeffrey S Bowers
Journal:  J Vis       Date:  2022-09-02       Impact factor: 2.004

6.  Guiding visual attention in deep convolutional neural networks based on human eye movements.

Authors:  Leonard Elia van Dyck; Sebastian Jochen Denzler; Walter Roland Gruber
Journal:  Front Neurosci       Date:  2022-09-13       Impact factor: 5.152

7.  Perception without preconception: comparison between the human and machine learner in recognition of tissues from histological sections.

Authors:  Sanghita Barui; Parikshit Sanyal; K S Rajmohan; Ajay Malik; Sharmila Dudani
Journal:  Sci Rep       Date:  2022-09-30       Impact factor: 4.996

8.  Unsupervised learning predicts human perception and misperception of gloss.

Authors:  Katherine R Storrs; Barton L Anderson; Roland W Fleming
Journal:  Nat Hum Behav       Date:  2021-05-06

9.  Grounding deep neural network predictions of human categorization behavior in understandable functional features: The case of face identity.

Authors:  Christoph Daube; Tian Xu; Jiayu Zhan; Andrew Webb; Robin A A Ince; Oliver G B Garrod; Philippe G Schyns
Journal:  Patterns (N Y)       Date:  2021-09-10

10.  Motion illusion-like patterns extracted from photo and art images using predictive deep neural networks.

Authors:  Taisuke Kobayashi; Akiyoshi Kitaoka; Manabu Kosaka; Kenta Tanaka; Eiji Watanabe
Journal:  Sci Rep       Date:  2022-03-10       Impact factor: 4.379

  10 in total

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