Publication year
2019Publisher
[S.l.] : [S.n.]
In
2019 Conference on Cognitive Computational Neuroscience, pp. 44-47Annotation
Conference on Cognitive Computational Neuroscience (Berlin, Germany, 13-16 September 2019)
Publication type
Article in monograph or in proceedings

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Organization
SW OZ DCC AI
Languages used
English (eng)
Book title
2019 Conference on Cognitive Computational Neuroscience
Page start
p. 44
Page end
p. 47
Subject
Cognitive artificial intelligenceAbstract
Deep convolutional neural networks trained for image object categorization have shown remarkable similarities with representations found across the primate ventral visual stream. Yet, artificial and biological networks still exhibit important differences. Here we investigate one such property: increasing invariance to identity-preserving image transformations found along the ventral stream. Despite theoretical evidence that invariance should emerge naturally from the optimization process, we present empirical evidence that the activations of convolutional neural networks trained for object categorization are not robust to identity-preserving image transformations commonly used in data augmentation. As a solution, we propose data augmentation invariance, an unsupervised learning objective which improves the robustness of the learned representations by promoting the similarity between the activations of augmented image samples). Our results show that this approach is a simple, yet effective and efficient (10 % increase in training time) way of increasing the invariance of the models while obtaining similar categorization performance.
This item appears in the following Collection(s)
- Academic publications [232207]
- Faculty of Social Sciences [29104]
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