Timezone: »
Rapid categorization paradigms have a long history in experimental psychology: Characterized by short presentation times and speeded behavioral responses, these tasks highlight the efficiency with which our visual system processes natural object categories. Previous studies have shown that feed-forward hierarchical models of the visual cortex provide a good fit to human visual decisions. At the same time, recent work in computer vision has demonstrated significant gains in object recognition accuracy with increasingly deep hierarchical architectures. But it is unclear how well these models account for human visual decisions and what they may reveal about the underlying brain processes. We have conducted a large-scale psychophysics study to assess the correlation between computational models and human behavioral responses on a rapid animal vs. non-animal categorization task. We considered visual representations of varying complexity by analyzing the output of different stages of processing in three state-of-the-art deep networks. We found that recognition accuracy increases with higher stages of visual processing (higher level stages indeed outperforming human participants on the same task) but that human decisions agree best with predictions from intermediate stages. Overall, these results suggest that human participants may rely on visual features of intermediate complexity and that the complexity of visual representations afforded by modern deep network models may exceed the complexity of those used by human participants during rapid categorization.
Author Information
Sven Eberhardt (Brown University)
Jonah G Cader (Brown University)
Thomas Serre (Brown University)
More from the Same Authors
-
2022 : The emergence of visual simulation in task-optimized recurrent neural networks »
Alekh Karkada Ashok · Lakshmi Narasimhan Govindarajan · Drew Linsley · David Sheinberg · Thomas Serre -
2023 Poster: Break It Down: Evidence for Structural Compositionality in Neural Networks »
Michael Lepori · Thomas Serre · Ellie Pavlick -
2023 Poster: Performance-optimized deep neural networks are evolving into worse models of inferotemporal visual cortex »
Drew Linsley · Ivan F Rodriguez Rodriguez · Thomas FEL · Michael Arcaro · Saloni Sharma · Margaret Livingstone · Thomas Serre -
2023 Poster: A Holistic Approach to Unifying Automatic Concept Extraction and Concept Importance Estimation »
Thomas FEL · Victor Boutin · Louis Béthune · Remi Cadene · Mazda Moayeri · Léo Andéol · Mathieu Chalvidal · Thomas Serre -
2023 Poster: Unlocking Feature Visualization for Deep Network with MAgnitude Constrained Optimization »
Thomas FEL · Thibaut Boissin · Victor Boutin · Agustin PICARD · Paul Novello · Julien Colin · Drew Linsley · Tom ROUSSEAU · Remi Cadene · Laurent Gardes · Thomas Serre -
2023 Poster: Learning Functional Transduction »
Mathieu Chalvidal · Thomas Serre · Rufin VanRullen -
2023 Poster: Computing a human-like reaction time metric from stable recurrent vision models »
Lore Goetschalckx · Lakshmi Narasimhan Govindarajan · Alekh Karkada Ashok · Thomas Serre -
2022 Poster: Meta-Reinforcement Learning with Self-Modifying Networks »
Mathieu Chalvidal · Thomas Serre · Rufin VanRullen -
2022 Poster: A Benchmark for Compositional Visual Reasoning »
Aimen Zerroug · Mohit Vaishnav · Julien Colin · Sebastian Musslick · Thomas Serre -
2022 Poster: Diversity vs. Recognizability: Human-like generalization in one-shot generative models »
Victor Boutin · Lakshya Singhal · Xavier Thomas · Thomas Serre -
2022 Poster: Harmonizing the object recognition strategies of deep neural networks with humans »
Thomas FEL · Ivan F Rodriguez Rodriguez · Drew Linsley · Thomas Serre -
2022 Poster: What I Cannot Predict, I Do Not Understand: A Human-Centered Evaluation Framework for Explainability Methods »
Julien Colin · Thomas FEL · Remi Cadene · Thomas Serre -
2021 Poster: Tracking Without Re-recognition in Humans and Machines »
Drew Linsley · Girik Malik · Junkyung Kim · Lakshmi Narasimhan Govindarajan · Ennio Mingolla · Thomas Serre -
2021 Poster: Look at the Variance! Efficient Black-box Explanations with Sobol-based Sensitivity Analysis »
Thomas FEL · Remi Cadene · Mathieu Chalvidal · Matthieu Cord · David Vigouroux · Thomas Serre -
2020 Poster: Stable and expressive recurrent vision models »
Drew Linsley · Alekh Karkada Ashok · Lakshmi Narasimhan Govindarajan · Rex Liu · Thomas Serre -
2020 Spotlight: Stable and expressive recurrent vision models »
Drew Linsley · Alekh Karkada Ashok · Lakshmi Narasimhan Govindarajan · Rex Liu · Thomas Serre -
2020 Session: Orals & Spotlights Track 29: Neuroscience »
Aasa Feragen · Thomas Serre -
2018 Poster: Learning long-range spatial dependencies with horizontal gated recurrent units »
Drew Linsley · Junkyung Kim · Vijay Veerabadran · Charles Windolf · Thomas Serre -
2016 : Sven Eberhardt - More Feedback, Less Depth: Approximating Human Vision with Deep Networks. »
Sven Eberhardt -
2013 Poster: Neural representation of action sequences: how far can a simple snippet-matching model take us? »
Cheston Tan · Jedediah M Singer · Thomas Serre · David Sheinberg · Tomaso Poggio