XSPA: Crafting Imperceptible X-Shaped Sparse Adversarial Perturbations for Transferable Attacks on VLMs
Chengyin Hu, Jiaju Han, Xuemeng Sun, Qike Zhang, Yiwei Wei, Ang Li, Chunlei Meng, Xiang Chen, Jiahuan Long

TL;DR
This paper introduces XSPA, a highly sparse and structured adversarial attack on vision-language models, revealing their vulnerability to minimal, fixed geometric perturbations across multiple tasks.
Contribution
XSPA is a novel structured attack that uses intersecting diagonal lines to test VLM robustness under strict perturbation constraints.
Findings
XSPA reduces performance significantly across tasks.
Zero-shot accuracy drops over 50 points on CLIP models.
Semantic consistency and VQA correctness are substantially impaired.
Abstract
Vision-language models (VLMs) rely on a shared visual-textual representation space to perform tasks such as zero-shot classification, image captioning, and visual question answering (VQA). While this shared space enables strong cross-task generalization, it may also introduce a common vulnerability: small visual perturbations can propagate through the shared embedding space and cause correlated semantic failures across tasks. This risk is particularly important in interactive and decision-support settings, yet it remains unclear whether VLMs are robust to highly constrained, sparse, and geometrically fixed perturbations. To address this question, we propose X-shaped Sparse Pixel Attack (XSPA), an imperceptible structured attack that restricts perturbations to two intersecting diagonal lines. Compared with dense perturbations or flexible localized patches, XSPA operates under a much…
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