V3C1数据集:内容特征的评估

Fabian Berns, Luca Rossetto, Klaus Schöffmann, C. Beecks, G. Awad
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引用次数: 28

摘要

在这项工作中,我们分析了V3C1数据集的内容统计数据,这是vimeo创作共用集合(V3C)的第一个分区。该数据集旨在代表真实的野外网络视频,具有良好的视觉质量和多样化的内容特征,并将作为视频浏览器摊牌2019-2021和TREC视频检索(TRECVID) Ad-Hoc视频搜索任务2019-2021的评估依据。数据集带有镜头分割(大约100万个镜头),我们分析内容细节和统计数据。我们的研究表明,V3C1的含量非常多样化,没有显性特征,自相似性很低。因此,它非常适合视频检索评估以及TRECVID AVS或VBS的参与者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
V3C1 Dataset: An Evaluation of Content Characteristics
In this work we analyze content statistics of the V3C1 dataset, which is the first partition of theVimeo Creative Commons Collection (V3C). The dataset has been designed to represent true web videos in the wild, with good visual quality and diverse content characteristics, and will serve as evaluation basis for the Video Browser Showdown 2019-2021 and TREC Video Retrieval (TRECVID) Ad-Hoc Video Search tasks 2019-2021. The dataset comes with a shot segmentation (around 1 million shots) for which we analyze content specifics and statistics. Our research shows that the content of V3C1 is very diverse, has no predominant characteristics and provides a low self-similarity. Thus it is very well suited for video retrieval evaluations as well as for participants of TRECVID AVS or the VBS.
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