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ZINA: Multimodal Fine-grained Hallucination Detection and Editing

About

Multimodal Large Language Models (MLLMs) often generate hallucinations, where the output deviates from the visual content. Given that these hallucinations can take diverse forms, detecting hallucinations at a fine-grained level is essential for comprehensive evaluation and analysis. To this end, we propose a novel task of multimodal fine-grained hallucination detection and editing for MLLMs. Moreover, we propose ZINA, a novel method that identifies hallucinated spans at a fine-grained level, classifies their error types into six categories, and suggests appropriate refinements. To train and evaluate models for this task, we construct VisionHall, a dataset comprising 6.9k outputs from twelve MLLMs manually annotated by 211 annotators, and 20k synthetic samples generated using a graph-based method that captures dependencies among error types. We demonstrated that ZINA outperformed existing methods, including GPT-4o and Llama-3.2, in both detection and editing tasks.

Yuiga Wada, Kazuki Matsuda, Komei Sugiura, Graham Neubig• 2025

Related benchmarks

TaskDatasetResultRank
Hallucination DetectionVisionHall
F1 Score45.15
11
Hallucination EditingVisionHall
CLIP-S66.08
11
Hallucination DetectionMHaluBench Image-to-Text (Claim-level)
Hallucinatory Precision84.91
7
Hallucination DetectionMHaluBench Image-to-Text Segment-level
Hallucinatory Precision89.53
7
Hallucination LocalizationHalLoc (out-of-domain)
Object Score82
2
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