Fine-Grained Video Captioning for Sports Narrative

Huanyu Yu, Shuo Cheng, Bingbing Ni, Minsi Wang, Jian Zhang, Xiaokang Yang
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引用次数: 51

Abstract

Despite recent emergence of video caption methods, how to generate fine-grained video descriptions (i.e., long and detailed commentary about individual movements of multiple subjects as well as their frequent interactions) is far from being solved, which however has great applications such as automatic sports narrative. To this end, this work makes the following contributions. First, to facilitate this novel research of fine-grained video caption, we collected a novel dataset called Fine-grained Sports Narrative dataset (FSN) that contains 2K sports videos with ground-truth narratives from YouTube.com. Second, we develop a novel performance evaluation metric named Fine-grained Captioning Evaluation (FCE) to cope with this novel task. Considered as an extension of the widely used METEOR, it measures not only the linguistic performance but also whether the action details and their temporal orders are correctly described. Third, we propose a new framework for fine-grained sports narrative task. This network features three branches: 1) a spatio-temporal entity localization and role discovering sub-network; 2) a fine-grained action modeling sub-network for local skeleton motion description; and 3) a group relationship modeling sub-network to model interactions between players. We further fuse the features and decode them into long narratives by a hierarchically recurrent structure. Extensive experiments on the FSN dataset demonstrates the validity of the proposed framework for fine-grained video caption.
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精细的体育叙事视频字幕
尽管最近出现了视频字幕方法,但如何生成细粒度的视频描述(即对多个主体的单个动作进行长而详细的评论,以及他们之间的频繁互动)还远远没有解决,但它在自动体育叙事等方面有着很大的应用。为此,本工作做出了以下贡献。首先,为了促进这种细粒度视频标题的新颖研究,我们收集了一个名为细粒度体育叙事数据集(FSN)的新颖数据集,该数据集包含来自YouTube.com的具有真实叙事的2K体育视频。其次,我们开发了一种新的性能评估指标,称为细粒度字幕评估(Fine-grained Captioning evaluation, FCE)。作为广泛使用的METEOR的扩展,它不仅衡量语言性能,而且衡量动作细节及其时间顺序是否被正确描述。第三,提出了细粒度体育叙事任务的新框架。该网络具有三个分支:1)时空实体定位和角色发现子网络;2)用于局部骨架运动描述的细粒度动作建模子网络;3)建立群体关系建模子网络,对参与者之间的互动进行建模。我们进一步融合了这些特征,并通过分层循环的结构将它们解码成长篇叙事。在FSN数据集上的大量实验证明了该框架对细粒度视频标题的有效性。
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