NewsNet:一种新的分层时间分割数据集

Haoqian Wu, Keyun Chen, Haozhe Liu, Mingchen Zhuge, Bing-chuan Li, Ruizhi Qiao, Xiujun Shu, Bei Gan, Liangsheng Xu, Bohan Ren, Mengmeng Xu, Wentian Zhang, Raghavendra Ramachandra, Chia-Wen Lin, Bernard Ghanem
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引用次数: 5

摘要

时间视频分割是一种即席自动视频分析方法,它将长视频分解成更小的部分,以便于后续的理解任务。最近的工作研究了几个级别的粒度来分割视频,如镜头,事件和场景。这些分割可以帮助比较相应尺度的语义,但缺乏更大时间跨度的更广泛的视图,特别是当视频复杂和结构化时。因此,我们提出了时间分割的两个抽象层次,并研究了它们对现有细粒度层次的层次关系。因此,我们收集了NewsNet,这是最大的新闻视频数据集,由900多个小时的1000个视频组成,并与分层时间视频分割的几个任务相关联。每个新闻视频都是关于不同主题的故事的集合,表示为对齐的音频、视觉和文本数据,以及四种粒度的广泛的逐帧注释。我们认为,对新闻网络的研究可以促进对复杂结构化视频的理解,并有益于短视频创作、个性化广告、数字化教学和教育等领域。我们的数据集和代码可以在https://github.com/NewsNet-Benchmark/NewsNet上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NewsNet: A Novel Dataset for Hierarchical Temporal Segmentation
Temporal video segmentation is the get-to- go automatic video analysis, which decomposes a long-form video into smaller components for the following-up understanding tasks. Recent works have studied several levels of granularity to segment a video, such as shot, event, and scene. Those segmentations can help compare the semantics in the corresponding scales, but lack a wider view of larger temporal spans, especially when the video is complex and structured. Therefore, we present two abstractive levels of temporal segmentations and study their hierarchy to the existing fine-grained levels. Accordingly, we collect NewsNet, the largest news video dataset consisting of 1,000 videos in over 900 hours, associated with several tasks for hierarchical temporal video segmentation. Each news video is a collection of stories on different topics, represented as aligned audio, visual, and textual data, along with extensive frame-wise annotations in four granularities. We assert that the study on NewsNet can advance the understanding of complex structured video and benefit more areas such as short-video creation, personalized advertisement, digital instruction, and education. Our dataset and code is publicly available at https://github.com/NewsNet-Benchmark/NewsNet.
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