ViMU: Benchmarking Video Metaphorical Understanding

Qi Li, Xinchao Wang

arXiv:2605.14607 · 2026-05-15 공개 · arXiv · PDF

video-understanding multimodal-reasoning video-benchmark multimodal-evidence open-ended-questions metaphor subtext social-meaning

Abstract

Any new medium, once it emerges, is used for more than the transmission of overt content alone. The information it carries typically operates on two levels: one is the content directly presented, while the other is the subtext beneath it-the implicit ideas and intentions the creator seeks to convey through the medium. Likewise, since video technologies became widely adopted, video has served not only as a powerful tool for recording and communicating visual information, but also as a vehicle for emotions, attitudes, and social meanings that are often difficult to articulate explicitly. Thus, the true meaning of many videos does not reside solely in what is shown on screen; it is often embedded in context, style of expression, and the viewer's social experience. Some forms of such video subtext are humorous, while others carry irony, mockery, or criticism. These implicit meanings can also be interpreted very differently across cultural backgrounds and social groups. However, most existing video understanding models still focus primarily on literal visual comprehension, such as recognizing objects, actions, or temporal relations, and lack a systematic ability to understand the metaphorical, ironic, and social meanings embedded in videos. To bridge this gap, we introduce ViMU, the first benchmark designed to systematically evaluate the subtext understanding capabilities of frontier models in videos. ViMU assesses whether video understanding models can go beyond literal perception to infer implicit meaning while grounding their interpretations in multimodal evidence and answering both open-ended and multiple-choice questions. Importantly, all questions are designed to be hint-free, ensuring that no key evidence is disclosed to models before answering.

한국어 요약

📋 한 줄 요약

**[비디오 이해 / 멀티모달 평가]** 비유·풍자·사회적 의미와 같은 비디오 서브텍스트(subtext) 이해 능력을 체계적으로 평가하는 최초의 벤치마크 ViMU 제안.

🎯 핵심 기여도

💡 핵심 아이디어

영상의 진짜 의미는 화면에 보이는 것이 아니라 표현 방식·맥락·시청자의 사회적 경험에 깃들어 있으므로, 모델 평가는 표면 표상을 넘어 함축 의미와 그 근거 제시까지 측정해야 한다는 입장.

🔬 기술적 접근법

📊 주요 결과

💭 의의 및 한계

**의의**: 비디오 LLM이 "보이는 것" 너머의 의미를 다루도록 평가 축을 확장, 사회·문화적 맥락 이해 연구의 출발점 제공. **한계**: 함축 의미는 본질적으로 주관적·문화의존적이라 ground truth 합의가 어려움, 평가 도메인이 특정 컨텐츠 생태계에 편중될 가능성.

🚀 실용적 활용