E3S Web of Conferences (Jan 2023)

Video Transcript Summarizer

  • P Ilampiray,
  • D Naveen Raju,
  • A Thilagavathy,
  • M Mohamed Tharik,
  • S Madhan Kishore,
  • A.S Nithin,
  • I Infant Raj

DOI
https://doi.org/10.1051/e3sconf/202339904015
Journal volume & issue
Vol. 399
p. 04015

Abstract

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In today’s world, a large number of videos are uploaded in everyday, which contains information about something. The major challenge is to find the right video and understand the correct content, because there are lot of videos available some videos will contain useless content and even though the perfect content available that content should be required to us. If we not found right one it wastes your full effort and full time to extract the correct usefull information. We propose an innovation idea which uses NLP processing for text extraction and BERT Summarization for Text Summarization. This provides a video main content in text description and abstractive summary, enabling users to discriminate between relevant and irrelevant information according to their needs. Furthermore, our experiments show that the joint model can attain good results with informative, concise, and readable multi-line video description and summary in a human evaluation.