Generating web-based corpora for video transcripts categorization
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摘要
This paper proposes the use of Internet as a rich source of information in order to generate learning corpora for video transcripts categorization systems. Our main goal in this work has been to study the behavior of different learning corpora generated from the Internet and analyze some of their features. Specifically, Wikipedia, Google and the blogosphere have been employed to generate these learning corpora, using the VideoCLEF 2008 track as the evaluation framework for the different experiments carried out. Based on this evaluation framework, we conclude that the proposed approach is a promising strategy for the video classification task using the transcripts of the videos. The different sizes of the corpora generated could lead to believe that better results are achieved when the corpus size is larger, but we demonstrate that this feature may not always be a reliable indicator of the behavior of the learning corpus. The obtained results show that the integration of knowledge from the blogosphere or Google allows generating more reliable corpora for this task than those based on Wikipedia.
论文关键词:Video transcripts categorization,Video tagging,Web-based corpora generation,Automatic Speech Recognition (ASR)
论文评审过程:Available online 27 July 2012.
论文官网地址:https://doi.org/10.1016/j.eswa.2012.07.055