Consumer video understanding: a benchmark database and an evaluation of human and machine performance

Yu-Gang Jiang, Guangnan Ye, Shih-Fu Chang, D. Ellis, A. Loui
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引用次数: 291

Abstract

Recognizing visual content in unconstrained videos has become a very important problem for many applications. Existing corpora for video analysis lack scale and/or content diversity, and thus limited the needed progress in this critical area. In this paper, we describe and release a new database called CCV, containing 9,317 web videos over 20 semantic categories, including events like "baseball" and "parade", scenes like "beach", and objects like "cat". The database was collected with extra care to ensure relevance to consumer interest and originality of video content without post-editing. Such videos typically have very little textual annotation and thus can benefit from the development of automatic content analysis techniques. We used Amazon MTurk platform to perform manual annotation, and studied the behaviors and performance of human annotators on MTurk. We also compared the abilities in understanding consumer video content by humans and machines. For the latter, we implemented automatic classifiers using state-of-the-art multi-modal approach that achieved top performance in recent TRECVID multimedia event detection task. Results confirmed classifiers fusing audio and video features significantly outperform single-modality solutions. We also found that humans are much better at understanding categories of nonrigid objects such as "cat", while current automatic techniques are relatively close to humans in recognizing categories that have distinctive background scenes or audio patterns.
消费者视频理解:一个基准数据库和人类和机器性能的评估
在无约束视频中识别视觉内容已经成为许多应用中非常重要的问题。现有的视频分析语料库缺乏规模和/或内容多样性,因此限制了这一关键领域所需的进展。在本文中,我们描述并发布了一个名为CCV的新数据库,其中包含超过20个语义类别的9,317个网络视频,包括“棒球”和“游行”等事件,“海滩”等场景以及“猫”等对象。数据库的收集特别小心,以确保符合消费者的兴趣和视频内容的原创性,而无需后期编辑。这样的视频通常只有很少的文本注释,因此可以从自动内容分析技术的发展中受益。我们使用Amazon MTurk平台进行人工标注,并研究人工标注者在MTurk上的行为和性能。我们还比较了人类和机器理解消费者视频内容的能力。对于后者,我们使用最先进的多模态方法实现了自动分类器,该方法在最近的TRECVID多媒体事件检测任务中取得了最佳性能。结果证实,融合音频和视频特征的分类器明显优于单模态解决方案。我们还发现,人类在理解非刚性对象(如“猫”)的类别方面要好得多,而目前的自动技术在识别具有独特背景场景或音频模式的类别方面相对接近人类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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