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UnMask: Adversarial Detection and Defense Through Robust Feature Alignment

Computer Vision and Pattern Recognition 2020-11-17 v2 Cryptography and Security Machine Learning

Abstract

Deep learning models are being integrated into a wide range of high-impact, security-critical systems, from self-driving cars to medical diagnosis. However, recent research has demonstrated that many of these deep learning architectures are vulnerable to adversarial attacks--highlighting the vital need for defensive techniques to detect and mitigate these attacks before they occur. To combat these adversarial attacks, we developed UnMask, an adversarial detection and defense framework based on robust feature alignment. The core idea behind UnMask is to protect these models by verifying that an image's predicted class ("bird") contains the expected robust features (e.g., beak, wings, eyes). For example, if an image is classified as "bird", but the extracted features are wheel, saddle and frame, the model may be under attack. UnMask detects such attacks and defends the model by rectifying the misclassification, re-classifying the image based on its robust features. Our extensive evaluation shows that UnMask (1) detects up to 96.75% of attacks, and (2) defends the model by correctly classifying up to 93% of adversarial images produced by the current strongest attack, Projected Gradient Descent, in the gray-box setting. UnMask provides significantly better protection than adversarial training across 8 attack vectors, averaging 31.18% higher accuracy. We open source the code repository and data with this paper: https://github.com/safreita1/unmask.

Keywords

Cite

@article{arxiv.2002.09576,
  title  = {UnMask: Adversarial Detection and Defense Through Robust Feature Alignment},
  author = {Scott Freitas and Shang-Tse Chen and Zijie J. Wang and Duen Horng Chau},
  journal= {arXiv preprint arXiv:2002.09576},
  year   = {2020}
}

Comments

Accepted into IEEE Big Data 2020

R2 v1 2026-06-23T13:50:02.113Z