Disentangling Safe and Unsafe Corruptions via Anisotropy and Locality
Ramchandran Muthukumar, Ambar Pal, Jeremias Sulam, Rene Vidal

TL;DR
This paper introduces a novel, task-specific threat model called Projected Displacement (PD) that better captures real-world corruptions like blur or compression by considering unsafe directions in input space, improving robustness analysis.
Contribution
The paper proposes the PD threat model that incorporates anisotropy and locality, enabling more accurate robustness assessment against real-world corruptions without requiring pre-training.
Findings
PD includes safe perturbations like noise, blur, and compression.
PD effectively excludes unsafe perturbations that change the true label.
PD can be computed for arbitrary tasks without additional training.
Abstract
State-of-the-art machine learning systems are vulnerable to small perturbations to their input, where ``small'' is defined according to a threat model that assigns a positive threat to each perturbation. Most prior works define a task-agnostic, isotropic, and global threat, like the norm, where the magnitude of the perturbation fully determines the degree of the threat and neither the direction of the attack nor its position in space matter. However, common corruptions in computer vision, such as blur, compression, or occlusions, are not well captured by such threat models. This paper proposes a novel threat model called \texttt{Projected Displacement} (PD) to study robustness beyond existing isotropic and global threat models. The proposed threat model measures the threat of a perturbation via its alignment with \textit{unsafe directions}, defined as directions in the input…
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Taxonomy
TopicsImbalanced Data Classification Techniques
MethodsSparse Evolutionary Training
