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Metadata based multi-labelling of YouTube videos

机译:基于元数据的YouTube视频的多标签

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摘要

It is a challenging task to find video of interests on YouTube due to huge size of its repository. Multiple labels, if provided, can make search faster. This paper describes a two level automated mechanism to generate multiple labels for videos using their text based meta-data features. The first level of classification categorize videos into 5 harassment categories and then a second level generate a positive or negative label i.e. harassment or non-harassment. There has been no multi level classification of YouTube videos. Previous works have classified videos on a single level only whereas our work brings novelty to the approach by classifying videos into multi labels. Such a work can be useful for law enforcement and intelligence agencies to identify the unwanted and malicious videos on the Internet. The proposed approach has successfully generated multiple labels for unlabelled test videos.
机译:由于其存储库的大小,找到了对YouTube的兴趣视频是一个具有挑战性的任务。如果提供的话,多个标签可以更快地进行搜索。本文介绍了一种使用其基于文本的元数据特征生成视频的多级自动机制,用于为视频生成多个标签。第一级分类将视频分类为5个骚扰类别,然后第二级生成正面或负面标签即,骚扰或非骚扰。 YouTube视频没有多级分类。以前的作品仅在单个级别上进行了分类视频,而我们的工作通过将视频分类为多标签来为方法带来新颖性。这样的工作对于执法和情报机构有用,以确定互联网上的不需要的和恶意视频。该方法已成功生成了未标记的测试视频的多个标签。

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