Exploiting information extraction techniques for automatic semantic video indexing with an application to Turkish news videos
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摘要
This paper targets at the problem of automatic semantic indexing of news videos by presenting a video annotation and retrieval system which is able to perform automatic semantic annotation of news video archives and provide access to the archives via these annotations. The presented system relies on the video texts as the information source and exploits several information extraction techniques on these texts to arrive at representative semantic information regarding the underlying videos. These techniques include named entity recognition, person entity extraction, coreference resolution, and semantic event extraction. Apart from the information extraction components, the proposed system also encompasses modules for news story segmentation, text extraction, and video retrieval along with a news video database to make it a full-fledged system to be employed in practical settings. The proposed system is a generic one employing a wide range of techniques to automate the semantic video indexing process and to bridge the semantic gap between what can be automatically extracted from videos and what people perceive as the video semantics. Based on the proposed system, a novel automatic semantic annotation and retrieval system is built for Turkish and evaluated on a broadcast news video collection, providing evidence for its feasibility and convenience for news videos with a satisfactory overall performance.
论文关键词:Semantic video annotation,News video retrieval,Information extraction,Text mining,Video indexing
论文评审过程:Received 11 November 2010, Revised 8 March 2011, Accepted 8 March 2011, Available online 29 March 2011.
论文官网地址:https://doi.org/10.1016/j.knosys.2011.03.006