InfiniBench: A Benchmark for Large Multi-Modal Models in Long-Form Movies and TV Shows (2025.emnlp-main)
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Kirolos Ataallah, Eslam Mohamed Bakr, Mahmoud Ahmed, Chenhui Gou, Khushbu Pahwa, Jian Ding, Mohamed Elhoseiny
| Challenge: | Existing benchmarks fail to test the full range of cognitive skills needed to process long-form videos . |
| Approach: | They propose a benchmark to evaluate models' ability to process long-form videos rigorously. |
| Outcome: | The benchmark measures the cognitive skills of models in understanding long-form videos . it offers the largest set of question-answer pairs for long video comprehension . |
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| Challenge: | Existing multimodal large language models (LLMs) have shown impressive performance on the video understanding task, but extremely long videos still pose significant challenges to their context length, memory consumption, and computational complexity. |
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