Metadata extraction and classification of YouTube videos using sentiment analysis

@article{Rangaswamy2016MetadataEA,
  title={Metadata extraction and classification of YouTube videos using sentiment analysis},
  author={Shanta Rangaswamy and Shubham Ghosh and Srishti Jha and Soodamani Ramalingam},
  journal={2016 IEEE International Carnahan Conference on Security Technology (ICCST)},
  year={2016},
  pages={1-2}
}
MPEG media have been widely adopted and is very successful in promoting interoperable services that deliver video to consumers on a range of devices. [] Key Method The system uses sentiment analysis for such a classification. It is envisaged that the system when fully developed, is to be applied to determine the existence of illicit multimedia content on the Web.

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