Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

SmartSight: Mitigating Hallucination in Video-LLMs Without Compromising Video Understanding via Temporal Attention Collapse

About

Despite Video Large Language Models having rapidly advanced in recent years, perceptual hallucinations pose a substantial safety risk, which severely restricts their real-world applicability. While several methods for hallucination mitigation have been proposed, they often compromise the model's capacity for video understanding and reasoning. In this work, we propose SmartSight, a pioneering step to address this issue in a training-free manner by leveraging the model's own introspective capabilities. Specifically, SmartSight generates multiple candidate responses to uncover low-hallucinated outputs that are often obscured by standard greedy decoding. It assesses the hallucination of each response using the Temporal Attention Collapse score, which measures whether the model over-focuses on trivial temporal regions of the input video when generating the response. To improve efficiency, SmartSight identifies the Visual Attention Vanishing point, enabling more accurate hallucination estimation and early termination of hallucinated responses, leading to a substantial reduction in decoding cost. Experiments show that SmartSight substantially lowers hallucinations for Qwen2.5-VL-7B by 10.59% on VRIPT-HAL, while simultaneously enhancing video understanding and reasoning, boosting performance on VideoMMMU by up to 8.86%. These results highlight SmartSight's effectiveness in improving the reliability of open-source Video-LLMs.

Yiming Sun, Mi Zhang, Feifei Li, Geng Hong, Min Yang• 2025

Related benchmarks

TaskDatasetResultRank
Video Question AnsweringVideoMME
Accuracy56.2
99
Video Question AnsweringVideoMMMU
Accuracy47.6
52
Hallucination EvaluationVRIPT-HAL (test)
F1 Score52.9
15
Hallucination EvaluationEventHallusion binary QA (test)
Accuracy0.655
15
Video Understanding and ReasoningVideo-MME (test)
Overall Accuracy60.2
15
Video Understanding and ReasoningVideo-MMMU (test)
Overall Score0.519
15
Hallucination MitigationVRIPT-HAL
F1 Score52.1
12
Showing 7 of 7 rows

Other info

Follow for update