Abstract

Recent advances in Deep convolutional Neural Networks (DNNs) have enabled unprecedentedly accurate computational models of brain representations, and present an exciting opportunity to model diverse cognitive functions. State-of-the-art DNNs achieve human-level performance on object categorisation, but it is unclear how well they capture human behavior on complex cognitive tasks. Recent reports suggest that DNNs can explain significant variance in one such task, judging object similarity. Here, we extend these findings by replicating them for a rich set of object images, comparing performance across layers within two DNNs of different depths, and examining how the DNNs’ performance compares to that of non-computational “conceptual” models. Human observers performed similarity judgments for a set of 92 images of real-world objects. Representations of the same images were obtained in each of the layers of two DNNs of different depths (8-layer AlexNet and 16-layer VGG-16). To create conceptual models, other human observers generated visual-feature labels (e.g., “eye”) and category labels (e.g., “animal”) for the same image set. Feature labels were divided into parts, colors, textures and contours, while category labels were divided into subordinate, basic, and superordinate categories. We fitted models derived from the features, categories, and from each layer of each DNN to the similarity judgments, using representational similarity analysis to evaluate model performance. In both DNNs, similarity within the last layer explains most of the explainable variance in human similarity judgments. The last layer outperforms almost all feature-based models. Late and mid-level layers outperform some but not all feature-based models. Importantly, categorical models predict similarity judgments significantly better than any DNN layer. Our results provide further evidence for commonalities between DNNs and brain representations. Models derived from visual features other than object parts perform relatively poorly, perhaps because DNNs more comprehensively capture the colors, textures and contours which matter to human object perception. However, categorical models outperform DNNs, suggesting that further work may be needed to bring high-level semantic representations in DNNs closer to those extracted by humans. Modern DNNs explain similarity judgments remarkably well considering they were not trained on this task, and are promising models for many aspects of human cognition.

Highlights

  • Deep convolutional Neural Networks (DNNs) have revolutionized computer vision in recent years, reaching human-level performance on a variety of tasks, including the classification of objects in images (Krizhevsky et al, 2012; Simonyan and Zisserman, 2015; He et al, 2016)

  • Representations in the last layer of AlexNet show the emergence of the four main clusters present in the similarity judgments

  • To investigate the extent to which different DNN layers explain similarity judgments, we correlated the layerspecific DNN representations with the similarity judgments and compared performance between layers (Figures 4–6)

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Summary

Introduction

Deep convolutional Neural Networks (DNNs) have revolutionized computer vision in recent years, reaching human-level performance on a variety of tasks, including the classification of objects in images (Krizhevsky et al, 2012; Simonyan and Zisserman, 2015; He et al, 2016). Results are promising: DNNs predict neural representations of object images as measured in humans via fMRI (Khaligh-Razavi and Kriegeskorte, 2014; Güçlü and van Gerven, 2015) and MEG (Cichy et al, 2016), and in monkeys via electrophysiology (Yamins et al, 2014; Hong et al, 2016). These findings suggest that there are considerable similarities between DNN and brain representations of visual inputs

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