JOURNAL ARTICLE

Interpreting Adversarially Trained Convolutional Neural Networks

Tianyuan ZhangZhanxing Zhu

Year: 2019 Journal:   ePrints Soton (University of Southampton) Pages: 7502-7511   Publisher: University of Southampton

Abstract

We attempt to interpret how adversarially trained convolutional neural networks (AT-CNNs) recognize objects. We design systematic approaches to interpret AT-CNNs in both qualitative and quantitative ways and compare them with normally trained models. Surprisingly, we find that adversarial training alleviates the texture bias of standard CNNs when trained on object recognition tasks, and helps CNNs learn a more shape-biased representation. We validate our hypothesis from two aspects. First, we compare the salience maps of AT-CNNs and standard CNNs on clean images and images under different transformations. The comparison could visually show that the prediction of the two types of CNNs is sensitive to dramatically different types of features. Second, to achieve quantitative verification, we construct additional test datasets that destroy either textures or shapes, such as style-transferred version of clean data, saturated images and patch-shuffled ones, and then evaluate the classification accuracy of AT-CNNs and normal CNNs on these datasets. Our findings shed some light on why AT-CNNs are more robust than those normally trained ones and contribute to a better understanding of adversarial training over CNNs from an interpretation perspective.

Keywords:
Convolutional neural network Artificial intelligence Computer science Pattern recognition (psychology) Salience (neuroscience) Perspective (graphical) Representation (politics) Contextual image classification Machine learning Image (mathematics)

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Topics

Adversarial Robustness in Machine Learning
Physical Sciences →  Computer Science →  Artificial Intelligence
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