Perceptual Deep Neural Networks: Adversarial Robustness through Input Recreation
Danilo Vasconcellos Vargas, Bingli Liao, Takahiro Kanzaki

TL;DR
This paper introduces Perceptual Deep Neural Networks ($ ext{ϕ}$DNN) that recreate their input to improve adversarial robustness, demonstrating significant performance gains and insights into biological perception and input corruption benefits.
Contribution
The paper proposes a novel input recreation mechanism in neural networks, formalizes it mathematically, and shows its effectiveness in enhancing adversarial robustness over state-of-the-art methods.
Findings
$ ext{ϕ}$DNNs outperform existing defenses in robustness tests.
Recreation processes scale well with larger images.
Input corruption through recreation is beneficial for robustness.
Abstract
Adversarial examples have shown that albeit highly accurate, models learned by machines, differently from humans, have many weaknesses. However, humans' perception is also fundamentally different from machines, because we do not see the signals which arrive at the retina but a rather complex recreation of them. In this paper, we explore how machines could recreate the input as well as investigate the benefits of such an augmented perception. In this regard, we propose Perceptual Deep Neural Networks (DNN) which also recreate their own input before further processing. The concept is formalized mathematically and two variations of it are developed (one based on inpainting the whole image and the other based on a noisy resized super resolution recreation). Experiments reveal that DNNs and their adversarial training variations can increase the robustness substantially,…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Integrated Circuits and Semiconductor Failure Analysis · Anomaly Detection Techniques and Applications
