Annotating Objects and Relations in User-Generated Videos

Xindi Shang, Donglin Di, Junbin Xiao, Yu Cao, Xun Yang, Tat-Seng Chua
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引用次数: 111

Abstract

Understanding the objects and relations between them is indispensable to fine-grained video content analysis, which is widely studied in recent research works in multimedia and computer vision. However, existing works are limited to evaluating with either small datasets or indirect metrics, such as the performance over images. The underlying reason is that the construction of a large-scale video dataset with dense annotation is tricky and costly. In this paper, we address several main issues in annotating objects and relations in user-generated videos, and propose an annotation pipeline that can be executed at a modest cost. As a result, we present a new dataset, named VidOR, consisting of 10k videos (84 hours) together with dense annotations that localize 80 categories of objects and 50 categories of predicates in each video. We have made the training and validation set public and extendable for more tasks to facilitate future research on video object and relation recognition.
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标注用户生成视频中的对象和关系
了解对象及其之间的关系对于细粒度视频内容分析是必不可少的,这是近年来多媒体和计算机视觉研究工作中广泛研究的问题。然而,现有的工作仅限于使用小数据集或间接指标进行评估,例如对图像的性能。其根本原因是构建具有密集注释的大规模视频数据集非常棘手且成本高昂。在本文中,我们解决了在用户生成视频中注释对象和关系的几个主要问题,并提出了一个可以以适度成本执行的注释管道。因此,我们提出了一个名为VidOR的新数据集,该数据集由10k个视频(84小时)和密集的注释组成,这些注释在每个视频中定位了80类对象和50类谓词。我们将训练和验证集公开并可扩展到更多的任务中,以促进未来视频对象和关系识别的研究。
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