Wavelets Beat Monkeys at Adversarial Robustness
Jingtong Su, Julia Kempe

TL;DR
This paper demonstrates that wavelet scattering transforms combined with Gaussian noise can enhance adversarial robustness in neural networks, offering a resource-efficient alternative to biologically inspired models and adversarial training.
Contribution
It introduces a parameter-free, physics-inspired wavelet scattering approach that improves adversarial robustness without the need for adversarial training.
Findings
Wavelet scattering transforms outperform VOneBlock in robustness.
Gaussian noise enhances model robustness against adversarial attacks.
Physically inspired structures provide new robustness insights.
Abstract
Research on improving the robustness of neural networks to adversarial noise - imperceptible malicious perturbations of the data - has received significant attention. The currently uncontested state-of-the-art defense to obtain robust deep neural networks is Adversarial Training (AT), but it consumes significantly more resources compared to standard training and trades off accuracy for robustness. An inspiring recent work [Dapello et al.] aims to bring neurobiological tools to the question: How can we develop Neural Nets that robustly generalize like human vision? [Dapello et al.] design a network structure with a neural hidden first layer that mimics the primate primary visual cortex (V1), followed by a back-end structure adapted from current CNN vision models. It seems to achieve non-trivial adversarial robustness on standard vision benchmarks when tested on small perturbations. Here…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Cell Image Analysis Techniques
