BDTIAG: Reliable and Efficient Black-Box Adversarial Text-to-Image Generation via Decision Boundary Exploration
Authors:
Yongqi Jiao, Yucheng Shi, Yufei Gao, Lin Wei, and Lei Shi
Conference:
ICIC 2025 Posters, Ningbo, China, July 26-29, 2025
Pages:
839-852
Keywords:
Adversarial Attack, Text-to-Image Generation, Black-Box Framework, Information Security, Semantic Perturbation
Abstract
Text-to-image generation models can produce high-quality images from textual descriptions. However, they are vulnerable to adversarial attacks, which can manipulate outputs and bypass content moderation systems, leading to potential security risks. We propose BDTIAG, a black-box adversarial attack framework that improves attack efficiency and stealthiness. It comprises two key phases: 1 Adversarial Sample Space Expansion ASSE , which systematically perturbs text to generate diverse adversarial samples, and 2 Boundary Perturbation Backtracking BPB , which refines these samples to maximize attack success while minimizing detection. Extensive experiments on DALL·E, DALL·E 2, Imagen, and AttnGAN demonstrate that BDTIAG outperforms existing black-box attack methods, achieving a 6.25 increase in attack success rate and reducing the number of queries by 41.02 compared to RIATIG, all while preserving semantic consistency and naturalness.
BibTeX Citation:
@inproceedings{ICIC2025,
author = {Yongqi Jiao, Yucheng Shi, Yufei Gao, Lin Wei, and Lei Shi},
title = {BDTIAG: Reliable and Efficient Black-Box Adversarial Text-to-Image Generation via Decision Boundary Exploration},
booktitle = {Proceedings of the 21st International Conference on Intelligent Computing (ICIC 2025)},
month = {July},
date = {26-29},
year = {2025},
address = {Ningbo, China},
pages = {839-852},
note = {Poster Volume Ⅰ}
}