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📄 Abstract
Abstract: Multimodal misinformation, encompassing textual, visual, and cross-modal
distortions, poses an increasing societal threat that is amplified by
generative AI. Existing methods typically focus on a single type of distortion
and struggle to generalize to unseen scenarios. In this work, we observe that
different distortion types share common reasoning capabilities while also
requiring task-specific skills. We hypothesize that joint training across
distortion types facilitates knowledge sharing and enhances the model's ability
to generalize. To this end, we introduce TRUST-VL, a unified and explainable
vision-language model for general multimodal misinformation detection. TRUST-VL
incorporates a novel Question-Aware Visual Amplifier module, designed to
extract task-specific visual features. To support training, we also construct
TRUST-Instruct, a large-scale instruction dataset containing 198K samples
featuring structured reasoning chains aligned with human fact-checking
workflows. Extensive experiments on both in-domain and zero-shot benchmarks
demonstrate that TRUST-VL achieves state-of-the-art performance, while also
offering strong generalization and interpretability.