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A LDA-based method for automatic tagging of Youtube videos

机译:一种基于LDA的YouTube视频自动标记方法

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This article presents a method for automatic tagging of Youtube videos. The proposed method combines an automatic speech recognition (ASR) system, that extracts the spoken contents, and a keyword extraction component that aims at finding a small set of tags representing a video. In order to improve the robustness of the tagging system to the recognition errors, a video transcription is represented in a topic space obtained by a Latent Dirichlet Allocation (LDA), in which each dimension is automatically characterized by a list of weighted terms. Tags are extracted by combining the weighted word list of the best LDA classes. We evaluate this method by employing the user-provided tags of Youtube videos as reference and we investigate the impact of the topic model granularity. The obtained results demonstrate the interest of such model to improve the robustness of the tagging system.
机译:本文介绍了一种自动标记Youtube视频的方法。所提出的方法将提取语音内容的自动语音识别(ASR)系统和旨在查找代表视频的一小组标签的关键字提取组件结合在一起。为了提高标记系统对识别错误的鲁棒性,在通过潜在狄利克雷分配(LDA)获得的主题空间中表示视频转录,其中每个维度自动由一系列加权项来表征。通过组合最佳LDA类的加权单词列表来提取标签。我们通过使用用户提供的Youtube视频标签作为参考来评估此方法,并研究主题模型粒度的影响。获得的结果证明了这种模型对于改善标签系统的鲁棒性的兴趣。

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