CVAug 9, 2025

Adversarial Video Promotion Against Text-to-Video Retrieval

arXiv:2508.06964v21 citationsh-index: 7Has CodeIEEE Trans Inf Forensics Secur
Originality Highly original
AI Analysis

This work addresses a vulnerability in T2VR systems that could be exploited for financial gain or misinformation, representing a novel attack direction rather than an incremental improvement.

The paper tackles the problem of adversarial attacks that promote videos in text-to-video retrieval systems, introducing the Video Promotion attack (ViPro) with Modal Refinement to enhance transferability, achieving improvements of over 30%, 10%, and 4% in white, grey, and black-box settings respectively.

Thanks to the development of cross-modal models, text-to-video retrieval (T2VR) is advancing rapidly, but its robustness remains largely unexamined. Existing attacks against T2VR are designed to push videos away from queries, i.e., suppressing the ranks of videos, while the attacks that pull videos towards selected queries, i.e., promoting the ranks of videos, remain largely unexplored. These attacks can be more impactful as attackers may gain more views/clicks for financial benefits and widespread (mis)information. To this end, we pioneer the first attack against T2VR to promote videos adversarially, dubbed the Video Promotion attack (ViPro). We further propose Modal Refinement (MoRe) to capture the finer-grained, intricate interaction between visual and textual modalities to enhance black-box transferability. Comprehensive experiments cover 2 existing baselines, 3 leading T2VR models, 3 prevailing datasets with over 10k videos, evaluated under 3 scenarios. All experiments are conducted in a multi-target setting to reflect realistic scenarios where attackers seek to promote the video regarding multiple queries simultaneously. We also evaluated our attacks for defences and imperceptibility. Overall, ViPro surpasses other baselines by over $30/10/4\%$ for white/grey/black-box settings on average. Our work highlights an overlooked vulnerability, provides a qualitative analysis on the upper/lower bound of our attacks, and offers insights into potential counterplays. Code will be publicly available at https://github.com/michaeltian108/ViPro.

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