YouTree: A Visualization Paradigm of Statistically and Textually Similar Videos

Dhanasekar Sundararaman, Vishwanath Seshagiri, Balaji Ramesh, Priya Arora
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Abstract

The rise of social media usage in the form of multimedia is on an exponential increase owing to the increased internet bandwidths in the recent past. As a result, people communicate in the form of videos and images a lot more than ever. One such video sharing and content developer platform is YouTube. YouTube has many features on video analytics in the form of recommendation systems, monetisation etc. It also offers many features for developers to evaluate their content and offers insights on the performance of their videos. Though these features are available, there is not even a single feature for developers to evaluate their content based on the performance of other's videos, which share the same nature of the content - the similarity between any two videos. Here, the similarity between two videos has a statistical measure apart from the content, which includes description and comments of a video. Thus, we propose an analysis of a query video and a range of videos to determine the most similar videos using statistical and textual similarity. The statistical similarity is evident from the number of derived features extracted from a video and the textual similarity is found by analysing the text data from the description and comments of a video. Experimental results show that the resultant similar videos are highly representative of both the statistical and textual similarity and can be used as a measure to compare two videos.
YouTree:统计和文本相似视频的可视化范例
由于最近互联网带宽的增加,以多媒体形式出现的社交媒体使用量呈指数级增长。因此,人们比以往更多地以视频和图像的形式进行交流。YouTube就是这样一个视频分享和内容开发平台。YouTube在视频分析方面有很多功能,比如推荐系统、盈利等。它还为开发人员提供了许多功能来评估他们的内容,并提供了对视频性能的见解。虽然这些功能都是可用的,但开发者甚至没有一个功能可以根据其他视频的表现来评估他们的内容,这些视频具有相同的内容性质-任何两个视频之间的相似性。在这里,两个视频之间的相似度除了内容之外还有一个统计度量,包括视频的描述和评论。因此,我们提出对查询视频和一系列视频进行分析,以使用统计和文本相似性来确定最相似的视频。从视频中提取的衍生特征的数量可以看出统计相似度,通过分析视频描述和评论的文本数据可以发现文本相似度。实验结果表明,得到的相似视频在统计相似度和文本相似度上都具有很高的代表性,可以作为比较两个视频的度量。
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