Leveraging AutoEncoders and chaos theory to improve adversarial example detection
Anibal Pedraza,
Oscar Deniz,
Harbinder Singh
et al.
Abstract:The phenomenon of adversarial examples is one of the most attractive topics in machine learning research these days. These are particular cases that are able to mislead neural networks, with critical consequences. For this reason, different approaches are considered to tackle the problem. On the one side, defense mechanisms, such as AutoEncoder-based methods, are able to learn from the distribution of adversarial perturbations to detect them. On the other side, chaos theory and Lyapunov exponents (LEs) have al… Show more
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