CVOct 26, 2025

Self-Calibrated Consistency can Fight Back for Adversarial Robustness in Vision-Language Models

arXiv:2510.22785v12 citationsh-index: 3
Originality Incremental advance
AI Analysis

This addresses the problem of adversarial robustness for users of pre-trained vision-language models in zero-shot settings, offering a plug-and-play solution with incremental improvements over existing defenses.

The paper tackles the vulnerability of vision-language models like CLIP to adversarial attacks by proposing Self-Calibrated Consistency (SCC), a test-time defense that improves zero-shot robustness across 22 benchmarks while maintaining accuracy.

Pre-trained vision-language models (VLMs) such as CLIP have demonstrated strong zero-shot capabilities across diverse domains, yet remain highly vulnerable to adversarial perturbations that disrupt image-text alignment and compromise reliability. Existing defenses typically rely on adversarial fine-tuning with labeled data, limiting their applicability in zero-shot settings. In this work, we identify two key weaknesses of current CLIP adversarial attacks -- lack of semantic guidance and vulnerability to view variations -- collectively termed semantic and viewpoint fragility. To address these challenges, we propose Self-Calibrated Consistency (SCC), an effective test-time defense. SCC consists of two complementary modules: Semantic consistency, which leverages soft pseudo-labels from counterattack warm-up and multi-view predictions to regularize cross-modal alignment and separate the target embedding from confusable negatives; and Spatial consistency, aligning perturbed visual predictions via augmented views to stabilize inference under adversarial perturbations. Together, these modules form a plug-and-play inference strategy. Extensive experiments on 22 benchmarks under diverse attack settings show that SCC consistently improves the zero-shot robustness of CLIP while maintaining accuracy, and can be seamlessly integrated with other VLMs for further gains. These findings highlight the great potential of establishing an adversarially robust paradigm from CLIP, with implications extending to broader vision-language domains such as BioMedCLIP.

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