Abrupt shot boundary detection based on averaged two-dependence estimators learning
|dc.identifier.citation||Tippaya, S. and Sitjongsataporn, S. and Tan, T. and Chamnongthai, K. 2014. Abrupt shot boundary detection based on averaged two-dependence estimators learning, in Proceedings of the 14th International Symposium on Communications and Information Technologies (ISCIT), Sep 24-26 2014, pp. 522-526. Incheon, South Korea: IEEE.|
Video shot boundary detection is the process of automatically detecting the meaningful boundary in video data. It becomes an essential pre-processing step to video analysis, summarisation and other content-based retrieval. Video frame feature representation also plays an important role in the process where it directly affects to the performance of the system. Histogram dissimilarity-based with the pre-processed features scheme are proposed to represent the temporal characteristic in videos. Motivated by the practical applications with moderate computational time, supervised abrupt shot boundary detection with averaged two-dependence estimators probabilistic classification learning scheme is proposed in this paper. The performance evaluation is performed by TRECVID 2007 videos dataset containing various types of video category. The performance of the proposed scheme can be expressed in terms of precision and recall to detect the correct abrupt video shot.
|dc.title||Abrupt shot boundary detection based on averaged two-dependence estimators learning|
|dcterms.source.title||14th International Symposium on Communications and Information Technologies, ISCIT 2014|
|dcterms.source.series||14th International Symposium on Communications and Information Technologies, ISCIT 2014|
|dcterms.source.conference||2014 International Symposium on Communications and Information Technologies (ISCIT)|
|dcterms.source.place||Incheon, South Korea|
|curtin.department||Department of Mechanical Engineering|
|curtin.accessStatus||Fulltext not available|
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