Review on Semantic Content Extraction in Videos

  • Authors

    • Anuranji R
    • Dr. Srimathi H
    https://doi.org/10.14419/ijet.v8i1.10.28322

    Received date: March 12, 2019

    Accepted date: March 12, 2019

    Published date: February 15, 2026

  • Auditors, fraud, detection, prevention
  • Abstract

    In recent years the need for extracting contents from video in applications such as medical, forensics has increased. Raw data representing the elementary physical video attributes and low-level features representing audio, video, text alone are not sufficient to fulfill the user’s needs resulting in a deeper understanding of the content at the semantic level. Hence digital video databases have come to be more pervasive and finding video clips quickly in video databases have become a major challenge. Manual techniques were used which were inefficient, subjective and costly in time and limit the querying capabilities. Here Video Semantic Content Model is presented which helps in the automatic extraction of objects, events and concepts which is based on domain ontology. In proposed framework, viewing angle of camera to improve extraction capabilities is been considered.

  • References

    1. Y. Yildirim, A. Yazici, T. Yilmaz, "Automatic Semantic Content Extraction in Videos Using a Fuzzy Ontology and Rule-Based Model", IEEE Transactions on Knowledge & Data Engineering, vol.25, no. 1, pp. 47-61, Jan. 2013, doi:10.1109/TKDE.2011.189
    2. M. Petkovic and W. Jonker, “Content-Based Video Retrieval by Integrating Spatio-Temporal and Stochastic Recognition of Events,” Proc. IEEE Int’l Workshop Detection and Recognition of Events in Video, pp. 75-82, 2001.
    3. L. Bai, S.Y. Lao, G. Jones, and A.F. Smeaton, “Video Semantic Content Analysis Based on Ontology,” IMVIP ’07: Proc. 11th Int’l Machine Vision and Image Processing Conf., pp. 117-124, 2007.
    4. Andrea Cavallarao and Touradj Ebrahimi, “Object Based video: Extraction tools, evaluation metrics and application” .
    5. M. Petkovic and W. Jonker, “An Overview of Data Models and Query Languages for Content-Based Video Retrieval,” Proc. Int’l Conf. Advances in Infrastructure for E-Business, Science, and Education on a Internet, Aug. 2000.
    6. G.G. Medioni, I. Cohen, F. Bre´mond, S. Hongeng, and R. Nevatia, “Event Detection and Analysis from Video Streams,” IEEE Trans. Pattern Analysis Machine Intelligence, vol. 23, no. 8, pp. 873-889, Aug. 2001.
    7. Hakeem and M. Shah, “Multiple Agent Event Detection and Representation in Videos”, Proc. 20th Nat’l Conf. Artificial Intelligence (AAAI), pp. 89-94, 2005.
    8. S. Hongeng, R. Nevatia, and F. Bre´mond, “Video-Based Event Recognition: Activity Representation and Probabilistic Recognition Methods,” Computer Vision and Image Understanding, vol. 96, no. 2, pp. 129-162, 2004.
    9. M.E. Do’nderler, E. Saykol, U. Arslan, O ¨ . Ulusoy, and U. Gu¨du¨ kbay, “Bilvideo: Design and Implementation of a Video Database Management System,” Multimedia Tools Applications, vol. 27, no. 1, pp. 79-104, 2005.
    10. T. Sevilmis, M. Bastan, U. Gu¨du¨ kbay, and O ¨ . Ulusoy, “Automatic Detection of Salient Objects and Spatial Relations in Videos for a Video Database System,” Image Vision Computing, vol. 26, no. 10, pp. 1384-1396, 2008.
    11. M. Ko¨pru¨ lu¨, N.K. Cicekli, and A. Yazici, “Spatio-Temporal Querying in Video Databases,” Information Sciences, vol. 160, nos. 1-4, pp. 131-152, 2004.
    12. J. Fan, W. Aref, A. Elmagarmid, M. Hacid, M. Marzouk, and X. Zhu, “Multiview: Multilevel Video Content Representation and Retrieval,” J. Electronic Imaging, vol. 10, no. 4, pp. 895-908, 2001.
  • Downloads

  • How to Cite

    R, A., & Srimathi H, D. (2026). Review on Semantic Content Extraction in Videos. International Journal of Engineering and Technology, 8(1.10), 151-154. https://doi.org/10.14419/ijet.v8i1.10.28322