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Adversarial Color Enhancement: Generating Unrestricted Adversarial Images by Optimizing a Color Filter

About

We introduce an approach that enhances images using a color filter in order to create adversarial effects, which fool neural networks into misclassification. Our approach, Adversarial Color Enhancement (ACE), generates unrestricted adversarial images by optimizing the color filter via gradient descent. The novelty of ACE is its incorporation of established practice for image enhancement in a transparent manner. Experimental results validate the white-box adversarial strength and black-box transferability of ACE. A range of examples demonstrates the perceptual quality of images that ACE produces. ACE makes an important contribution to recent work that moves beyond $L_p$ imperceptibility and focuses on unrestricted adversarial modifications that yield large perceptible perturbations, but remain non-suspicious, to the human eye. The future potential of filter-based adversaries is also explored in two directions: guiding ACE with common enhancement practices (e.g., Instagram filters) towards specific attractive image styles and adapting ACE to image semantics. Code is available at https://github.com/ZhengyuZhao/ACE.

Zhengyu Zhao, Zhuoran Liu, Martha Larson• 2020

Related benchmarks

TaskDatasetResultRank
Adversarial AttackImageNet (val)--
222
Adversarial AttackImageNet (test)
Success Rate91.2
101
Adversarial AttackImageNet-compatible Stable Diffusion context v1.4 (test)
ASR (MN-v2)99.1
38
Targeted Transfer AttackImageNet (val)
Attack Success Rate99.7
25
Image Quality AssessmentImageNet (test)
NIMA Score (AVA)5.12
11
Adversarial AttackImageNet-Compatible
HGD Score4.9
11
Image Quality AssessmentImageNet
NIMA Technical Score5.008
7
Black-box Adversarial AttackImageNet
Top-1 Accuracy (JPEG)31.2
7
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