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Autori principali: Wu, Zhengqian, Li, Ruizhe, Xu, Zijun, Wang, Zhongyuan, Xiao, Chunxia, Liang, Chao
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.17022
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author Wu, Zhengqian
Li, Ruizhe
Xu, Zijun
Wang, Zhongyuan
Xiao, Chunxia
Liang, Chao
author_facet Wu, Zhengqian
Li, Ruizhe
Xu, Zijun
Wang, Zhongyuan
Xiao, Chunxia
Liang, Chao
contents Video question answering (VideoQA) aims to answer natural language questions according to the given videos. Although existing models perform well in the factoid VideoQA task, they still face challenges in deep video understanding (DVU) task, which focuses on story videos. Compared to factoid videos, the most significant feature of story videos is storylines, which are composed of complex interactions and long-range evolvement of core story topics including characters, actions and locations. Understanding these topics requires models to possess DVU capability. However, existing DVU datasets rarely organize questions according to these story topics, making them difficult to comprehensively assess VideoQA models' DVU capability of complex storylines. Additionally, the question quantity and video length of these dataset are limited by high labor costs of handcrafted dataset building method. In this paper, we devise a large language model based multi-agent collaboration framework, StoryMind, to automatically generate a new large-scale DVU dataset. The dataset, FriendsQA, derived from the renowned sitcom Friends with an average episode length of 1,358 seconds, contains 44.6K questions evenly distributed across 14 fine-grained topics. Finally, We conduct comprehensive experiments on 10 state-of-the-art VideoQA models using the FriendsQA dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2412_17022
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FriendsQA: A New Large-Scale Deep Video Understanding Dataset with Fine-grained Topic Categorization for Story Videos
Wu, Zhengqian
Li, Ruizhe
Xu, Zijun
Wang, Zhongyuan
Xiao, Chunxia
Liang, Chao
Computer Vision and Pattern Recognition
Video question answering (VideoQA) aims to answer natural language questions according to the given videos. Although existing models perform well in the factoid VideoQA task, they still face challenges in deep video understanding (DVU) task, which focuses on story videos. Compared to factoid videos, the most significant feature of story videos is storylines, which are composed of complex interactions and long-range evolvement of core story topics including characters, actions and locations. Understanding these topics requires models to possess DVU capability. However, existing DVU datasets rarely organize questions according to these story topics, making them difficult to comprehensively assess VideoQA models' DVU capability of complex storylines. Additionally, the question quantity and video length of these dataset are limited by high labor costs of handcrafted dataset building method. In this paper, we devise a large language model based multi-agent collaboration framework, StoryMind, to automatically generate a new large-scale DVU dataset. The dataset, FriendsQA, derived from the renowned sitcom Friends with an average episode length of 1,358 seconds, contains 44.6K questions evenly distributed across 14 fine-grained topics. Finally, We conduct comprehensive experiments on 10 state-of-the-art VideoQA models using the FriendsQA dataset.
title FriendsQA: A New Large-Scale Deep Video Understanding Dataset with Fine-grained Topic Categorization for Story Videos
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.17022