Stealthy Backdoor Attack in Self-Supervised Learning Vision Encoders for Large Vision Language Models
Journal:
arXiv
Published Date:
Feb 25, 2025
Abstract
Self-supervised learning (SSL) vision encoders learn high-quality image
representations and thus have become a vital part of developing vision modality
of large vision language models (LVLMs). Due to the high cost of training such
encoders, pre-trained encoders are widely shared and deployed into many LVLMs,
which are security-critical or bear societal significance. Under this practical
scenario, we reveal a new backdoor threat that significant visual
hallucinations can be induced into these LVLMs by merely compromising vision
encoders. Because of the sharing and reuse of these encoders, many downstream
LVLMs may inherit backdoor behaviors from encoders, leading to widespread
backdoors. In this work, we propose BadVision, the first method to exploit this
vulnerability in SSL vision encoders for LVLMs with novel trigger optimization
and backdoor learning techniques. We evaluate BadVision on two types of SSL
encoders and LVLMs across eight benchmarks. We show that BadVision effectively
drives the LVLMs to attacker-chosen hallucination with over 99% attack success
rate, causing a 77.6% relative visual understanding error while maintaining the
stealthiness. SoTA backdoor detection methods cannot detect our attack
effectively.