Основные понятия
Enhancing video comprehension through challenging and surprising content.
Аннотация
The FunQA dataset introduces challenging tasks to evaluate models' understanding of surprising videos, focusing on humor, creativity, and magic. It emphasizes counter-intuitive reasoning and deep video comprehension capabilities. The dataset consists of three subsets: HumorQA, CreativeQA, and MagicQA, each with specific tasks tailored to assess model performance in timestamp localization, detailed description, and reasoning around counter-intuitiveness. FunMentor is introduced as an agent to refine Vision-Language Models (VLMs) through multi-turn dialogues for enhanced understanding of surprising content.
- Overview of FunQA dataset comprising three subsets: HumorQA, CreativeQA, and MagicQA.
- Introduction of challenging tasks for evaluating model capabilities in video comprehension.
- Description of the construction pipeline for the FunQA dataset.
- Evaluation metrics used to assess model performance on different tasks within the dataset.
- Comparison with previous benchmarks like NExT-QA to highlight the uniqueness and challenges posed by FunQA.
Статистика
"FunMentor engages in detailed, multi-turn dialogues."
"312K free-text QA pairs derived from 4.3K video clips."
"Total length of videos is 23.9 hours."
Цитаты
"Enjoyment of these videos hinges on the human capacity to understand commonsense violations."
"Existing VLMs perform poorly on timestamp localization tasks."
"Caption-based models excel in providing detailed descriptions but struggle in reasoning tasks."