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Autori principali: Hoche, Joseph, Brellmann, David, Franchi, Gianni
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.27136
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author Hoche, Joseph
Brellmann, David
Franchi, Gianni
author_facet Hoche, Joseph
Brellmann, David
Franchi, Gianni
contents Uncertainty quantification (UQ) remains a critical challenge in Large Vision Language Models (LVLMs) for reliable predictions and real-world deployment. However, most existing methods are adapted from the LLM literature and primarily focus on the language modality, leaving the contribution of visual information to LVLM uncertainty largely underexplored. In this paper, we investigate how LVLMs process visual information and whether this process can be used to improve uncertainty estimation. By analyzing hidden representations after the integration of visual features during the generation process, we observe that high-confidence predictions rely more heavily on visual content than uncertain ones. Building on this insight, we propose Visual-Grounded Token UQ (VIG-TUQ), a training-free framework that explicitly incorporates visual grounding into uncertainty estimation by weighting token-level language uncertainty with visual grounding scores. We evaluate VIG-TUQ on multiple datasets and across diverse LVLM architectures, including early-fusion, late-fusion, and native-fusion models. Results indicate that our method often improves upon existing token-level uncertainty approaches. Code and data will be made available upon acceptance.
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id arxiv_https___arxiv_org_abs_2605_27136
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publishDate 2026
record_format arxiv
spellingShingle Leveraging Visual Signals for Robust Token-Level Uncertainty in Vision-Language Generation
Hoche, Joseph
Brellmann, David
Franchi, Gianni
Computer Vision and Pattern Recognition
Uncertainty quantification (UQ) remains a critical challenge in Large Vision Language Models (LVLMs) for reliable predictions and real-world deployment. However, most existing methods are adapted from the LLM literature and primarily focus on the language modality, leaving the contribution of visual information to LVLM uncertainty largely underexplored. In this paper, we investigate how LVLMs process visual information and whether this process can be used to improve uncertainty estimation. By analyzing hidden representations after the integration of visual features during the generation process, we observe that high-confidence predictions rely more heavily on visual content than uncertain ones. Building on this insight, we propose Visual-Grounded Token UQ (VIG-TUQ), a training-free framework that explicitly incorporates visual grounding into uncertainty estimation by weighting token-level language uncertainty with visual grounding scores. We evaluate VIG-TUQ on multiple datasets and across diverse LVLM architectures, including early-fusion, late-fusion, and native-fusion models. Results indicate that our method often improves upon existing token-level uncertainty approaches. Code and data will be made available upon acceptance.
title Leveraging Visual Signals for Robust Token-Level Uncertainty in Vision-Language Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.27136