Enhancing Adversarial Transferability in Visual-Language Pre-training Models via Local Shuffle and Sample-based Attack

Reading time: 2 minute
...

📝 Original Info

  • Title: Enhancing Adversarial Transferability in Visual-Language Pre-training Models via Local Shuffle and Sample-based Attack
  • ArXiv ID: 2511.00831
  • Date: 2025-11-02
  • Authors: ** 정보 제공되지 않음 (논문에 저자 정보가 명시되지 않음) **

📝 Abstract

Visual-Language Pre-training (VLP) models have achieved significant performance across various downstream tasks. However, they remain vulnerable to adversarial examples. While prior efforts focus on improving the adversarial transferability of multimodal adversarial examples through cross-modal interactions, these approaches suffer from overfitting issues, due to a lack of input diversity by relying excessively on information from adversarial examples in one modality when crafting attacks in another. To address this issue, we draw inspiration from strategies in some adversarial training methods and propose a novel attack called Local Shuffle and Sample-based Attack (LSSA). LSSA randomly shuffles one of the local image blocks, thus expanding the original image-text pairs, generating adversarial images, and sampling around them. Then, it utilizes both the original and sampled images to generate the adversarial texts. Extensive experiments on multiple models and datasets demonstrate that LSSA significantly enhances the transferability of multimodal adversarial examples across diverse VLP models and downstream tasks. Moreover, LSSA outperforms other advanced attacks on Large Vision-Language Models.

💡 Deep Analysis

Figure 1

📄 Full Content

📸 Image Gallery

ALBEFbar.png CSSA_adversarial_persentation.png CSSA_v7.png MI.png epsilon.png loss_weight_fig.png num_corner_shuffle_ALBEF2CLIPCNN.png num_corner_shuffle_ALBEF2CLIPVIT.png num_corner_shuffle_ALBEF2TCL.png shuffle_idx_ALBEF2CLIPCNN.png shuffle_idx_ALBEF2CLIPVIT.png shuffle_idx_ALBEF2TCL.png shuffle_sample.png

Reference

This content is AI-processed based on open access ArXiv data.

Start searching

Enter keywords to search articles

↑↓
ESC
⌘K Shortcut