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Main Authors: Wang, Tianbo, Ma, Yuqing, Liao, Kewei, Zhang, Zhange, Li, Simin, Guo, Jinyang, Liu, Xianglong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.01957
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author Wang, Tianbo
Ma, Yuqing
Liao, Kewei
Zhang, Zhange
Li, Simin
Guo, Jinyang
Liu, Xianglong
author_facet Wang, Tianbo
Ma, Yuqing
Liao, Kewei
Zhang, Zhange
Li, Simin
Guo, Jinyang
Liu, Xianglong
contents Large Vision-Language Models (LVLMs) have achieved substantial progress in cross-modal tasks. However, due to language bias, LVLMs are susceptible to object hallucination, which can be primarily divided into category, attribute, and relation hallucination, significantly impeding the trustworthy AI applications. Editing the internal activations of LVLMs has shown promising effectiveness in mitigating hallucinations with minimal cost. However, previous editing approaches neglect the effective guidance offered by factual textual semantics, thereby struggling to explicitly mitigate language bias. To address these issues, we propose Adaptive Factual-guided Visual-Textual Editing for hallucination mitigation (AFTER), which comprises Factual-Augmented Activation Steering (FAS) and Query-Adaptive Offset Optimization (QAO), to adaptively guides the original biased activations towards factual semantics. Specifically, FAS is proposed to provide factual and general guidance for activation editing, thereby explicitly modeling the precise visual-textual associations. Subsequently, QAO introduces a query-aware offset estimator to establish query-specific editing from the general steering vector, enhancing the diversity and granularity of editing. Extensive experiments on standard hallucination benchmarks across three widely adopted LVLMs validate the efficacy of the proposed AFTER, notably achieving up to a 16.3% reduction of hallucination over baseline on the AMBER benchmark. Our code and data will be released for reproducibility.
format Preprint
id arxiv_https___arxiv_org_abs_2601_01957
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AFTER: Mitigating the Object Hallucination of LVLM via Adaptive Factual-Guided Activation Editing
Wang, Tianbo
Ma, Yuqing
Liao, Kewei
Zhang, Zhange
Li, Simin
Guo, Jinyang
Liu, Xianglong
Computer Vision and Pattern Recognition
Large Vision-Language Models (LVLMs) have achieved substantial progress in cross-modal tasks. However, due to language bias, LVLMs are susceptible to object hallucination, which can be primarily divided into category, attribute, and relation hallucination, significantly impeding the trustworthy AI applications. Editing the internal activations of LVLMs has shown promising effectiveness in mitigating hallucinations with minimal cost. However, previous editing approaches neglect the effective guidance offered by factual textual semantics, thereby struggling to explicitly mitigate language bias. To address these issues, we propose Adaptive Factual-guided Visual-Textual Editing for hallucination mitigation (AFTER), which comprises Factual-Augmented Activation Steering (FAS) and Query-Adaptive Offset Optimization (QAO), to adaptively guides the original biased activations towards factual semantics. Specifically, FAS is proposed to provide factual and general guidance for activation editing, thereby explicitly modeling the precise visual-textual associations. Subsequently, QAO introduces a query-aware offset estimator to establish query-specific editing from the general steering vector, enhancing the diversity and granularity of editing. Extensive experiments on standard hallucination benchmarks across three widely adopted LVLMs validate the efficacy of the proposed AFTER, notably achieving up to a 16.3% reduction of hallucination over baseline on the AMBER benchmark. Our code and data will be released for reproducibility.
title AFTER: Mitigating the Object Hallucination of LVLM via Adaptive Factual-Guided Activation Editing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.01957