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Prompt-Driven Contrastive Learning for Transferable Adversarial Attacks

About

Recent vision-language foundation models, such as CLIP, have demonstrated superior capabilities in learning representations that can be transferable across diverse range of downstream tasks and domains. With the emergence of such powerful models, it has become crucial to effectively leverage their capabilities in tackling challenging vision tasks. On the other hand, only a few works have focused on devising adversarial examples that transfer well to both unknown domains and model architectures. In this paper, we propose a novel transfer attack method called PDCL-Attack, which leverages the CLIP model to enhance the transferability of adversarial perturbations generated by a generative model-based attack framework. Specifically, we formulate an effective prompt-driven feature guidance by harnessing the semantic representation power of text, particularly from the ground-truth class labels of input images. To the best of our knowledge, we are the first to introduce prompt learning to enhance the transferable generative attacks. Extensive experiments conducted across various cross-domain and cross-model settings empirically validate our approach, demonstrating its superiority over state-of-the-art methods.

Hunmin Yang, Jongoh Jeong, Kuk-Jin Yoon• 2024

Related benchmarks

TaskDatasetResultRank
Adversarial AttackImageNet (val)
Accuracy56.05
80
Adversarial AttackImageNet
Accuracy67.57
63
Image ClassificationImageNet
Accuracy74.04
40
Object DetectionObjDet (OD)
mAP5028.48
26
Semantic segmentationSemSeg (SS)
mIoU26.05
26
Semantic segmentationCross-task Classification surrogate to Segmentation
DeepLabV3+ mIoU24.42
13
Object DetectionCross-task Classification surrogate to Detection
Faster R-CNN mAP5028.48
13
Adversarial Attack TransferabilityCUB-200 2011
Accuracy42.36
13
Adversarial Attack TransferabilityStanford Cars
Accuracy50.41
13
Adversarial Attack TransferabilityFGVC Aircraft
Accuracy Difference/Score38.96
13
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