Video-MME (long, no subtitles)

Video-MME is the first-ever comprehensive evaluation benchmark for Multi-modal Large Language Models (MLLMs) in video analysis. This variant focuses on long-term videos (30min-60min) without subtitle inputs, testing robust contextual dynamics across 6 primary visual domains with 30 subfields including knowledge, film & television, sports competition, life record, and multilingual content.

GPT-4.1 from OpenAI currently leads the Video-MME (long, no subtitles) leaderboard with a score of 0.720 across 1 evaluated AI models.

Paper

OpenAIGPT-4.1 leads with 72.0%.

Progress Over Time

Interactive timeline showing model performance evolution on Video-MME (long, no subtitles)

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Video-MME (long, no subtitles) Leaderboard

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FAQ

Common questions about Video-MME (long, no subtitles).

What is the Video-MME (long, no subtitles) benchmark?

Video-MME is the first-ever comprehensive evaluation benchmark for Multi-modal Large Language Models (MLLMs) in video analysis. This variant focuses on long-term videos (30min-60min) without subtitle inputs, testing robust contextual dynamics across 6 primary visual domains with 30 subfields including knowledge, film & television, sports competition, life record, and multilingual content.

What is the Video-MME (long, no subtitles) leaderboard?

The Video-MME (long, no subtitles) leaderboard ranks 1 AI models based on their performance on this benchmark. Currently, GPT-4.1 by OpenAI leads with a score of 0.720. The average score across all models is 0.720.

What is the highest Video-MME (long, no subtitles) score?

The highest Video-MME (long, no subtitles) score is 0.720, achieved by GPT-4.1 from OpenAI.

How many models are evaluated on Video-MME (long, no subtitles)?

1 models have been evaluated on the Video-MME (long, no subtitles) benchmark, with 0 verified results and 1 self-reported results.

Where can I find the Video-MME (long, no subtitles) paper?

The Video-MME (long, no subtitles) paper is available at https://arxiv.org/abs/2405.21075. The paper details the methodology, dataset construction, and evaluation criteria.

What categories does Video-MME (long, no subtitles) cover?

Video-MME (long, no subtitles) is categorized under multimodal, video, and vision. The benchmark evaluates multimodal models with multilingual support.

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