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Main Authors: Wang, JiYang, Chen, Jiawei, Xiao, Mengqi, Cheng, Yu, Li, Yangfu, Yin, Zhaoxia
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.22822
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author Wang, JiYang
Chen, Jiawei
Xiao, Mengqi
Cheng, Yu
Li, Yangfu
Yin, Zhaoxia
author_facet Wang, JiYang
Chen, Jiawei
Xiao, Mengqi
Cheng, Yu
Li, Yangfu
Yin, Zhaoxia
contents Object level hallucination remains a central reliability challenge for vision language models (VLMs), particularly in binary object existence verification. Existing benchmarks emphasize aggregate accuracy but rarely disentangle whether errors stem from perceptual limitations or from the influence of contextual textual priors, leaving underlying failure mechanisms ambiguous. We introduce DO-Bench, a controlled diagnostic benchmark that isolates these sources through structured multimodal interventions. Rather than evaluating models in unconstrained settings, DO-Bench probes two complementary dimensions: the Prior Override dimension progressively strengthens contextual textual priors while holding visual evidence constant to assess resistance to prior pressure, and the Perception-Limited dimension incrementally enhances visual evidence from full-scene context to localized object crops to measure perceptual grounding strength. This paired design enables attribution of errors to prior suppression, perceptual insufficiency, or their interaction. We further define two diagnostic metrics, PriorRobust and PerceptionAbility, to quantify these behaviors consistently. Evaluations across diverse open- and closed-source VLMs reveal systematic differences in prior sensitivity and perceptual reliability, demonstrating that object hallucination reflects heterogeneous, mechanism dependent failure patterns beyond aggregate accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22822
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle DO-Bench: An Attributable Benchmark for Diagnosing Object Hallucination in Vision-Language Models
Wang, JiYang
Chen, Jiawei
Xiao, Mengqi
Cheng, Yu
Li, Yangfu
Yin, Zhaoxia
Computer Vision and Pattern Recognition
Artificial Intelligence
Object level hallucination remains a central reliability challenge for vision language models (VLMs), particularly in binary object existence verification. Existing benchmarks emphasize aggregate accuracy but rarely disentangle whether errors stem from perceptual limitations or from the influence of contextual textual priors, leaving underlying failure mechanisms ambiguous. We introduce DO-Bench, a controlled diagnostic benchmark that isolates these sources through structured multimodal interventions. Rather than evaluating models in unconstrained settings, DO-Bench probes two complementary dimensions: the Prior Override dimension progressively strengthens contextual textual priors while holding visual evidence constant to assess resistance to prior pressure, and the Perception-Limited dimension incrementally enhances visual evidence from full-scene context to localized object crops to measure perceptual grounding strength. This paired design enables attribution of errors to prior suppression, perceptual insufficiency, or their interaction. We further define two diagnostic metrics, PriorRobust and PerceptionAbility, to quantify these behaviors consistently. Evaluations across diverse open- and closed-source VLMs reveal systematic differences in prior sensitivity and perceptual reliability, demonstrating that object hallucination reflects heterogeneous, mechanism dependent failure patterns beyond aggregate accuracy.
title DO-Bench: An Attributable Benchmark for Diagnosing Object Hallucination in Vision-Language Models
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2604.22822