detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2410.08620

Tema
Computer Science - Cryptography an... Computer Science - Computer Vision... Computer Science - Multimedia
Autor
Zhu, Xiaopei Xu, Peiyang Zeng, Guanning Dong, Yingpeng Hu, Xiaolin
Categoría

Computer Science

Año

2024

fecha de cotización

16/10/2024

Palabras clave
science method image adversarial attacks models images computer
Métrico

Resumen

Research of adversarial attacks is important for AI security because it shows the vulnerability of deep learning models and helps to build more robust models.

Adversarial attacks on images are most widely studied, which include noise-based attacks, image editing-based attacks, and latent space-based attacks.

However, the adversarial examples crafted by these methods often lack sufficient semantic information, making it challenging for humans to understand the failure modes of deep learning models under natural conditions.

To address this limitation, we propose a natural language induced adversarial image attack method.

The core idea is to leverage a text-to-image model to generate adversarial images given input prompts, which are maliciously constructed to lead to misclassification for a target model.

To adopt commercial text-to-image models for synthesizing more natural adversarial images, we propose an adaptive genetic algorithm (GA) for optimizing discrete adversarial prompts without requiring gradients and an adaptive word space reduction method for improving query efficiency.

We further used CLIP to maintain the semantic consistency of the generated images.

In our experiments, we found that some high-frequency semantic information such as "foggy", "humid", "stretching", etc. can easily cause classifier errors.

This adversarial semantic information exists not only in generated images but also in photos captured in the real world.

We also found that some adversarial semantic information can be transferred to unknown classification tasks.

Furthermore, our attack method can transfer to different text-to-image models (e.g., Midjourney, DALL-E 3, etc.) and image classifiers.

Our code is available at: https://github.com/zxp555/Natural-Language-Induced-Adversarial-Images.

;Comment: Carmera-ready version.

To appear in ACM MM 2024

Zhu, Xiaopei,Xu, Peiyang,Zeng, Guanning,Dong, Yingpeng,Hu, Xiaolin, 2024, Natural Language Induced Adversarial Images

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