2020
DOI: 10.48550/arxiv.2003.01993
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Metrics and methods for robustness evaluation of neural networks with generative models

Abstract: Recent studies have shown that modern deep neural network classifiers are easy to fool, assuming that an adversary is able to slightly modify their inputs. Many papers have proposed adversarial attacks, defenses and methods to measure robustness to such adversarial perturbations. However, most commonly considered adversarial examples are based on p -bounded perturbations in the input space of the neural network, which are unlikely to arise naturally. Recently, especially in computer vision, researchers discove… Show more

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