Content Based Video Retrieval Systems with Local Features: A Survey

Authors

  • Gowrisankar Kalakoti Research Scholar, Annamalai University, Tamil Nadu, India
  • G. Prabhakaran Assistant Professor, Department of Computer Science & Engineering, Annamalai University, Tamil Nadu, India
  • P. Sudhakar Assistant Professor, Department of Computer Science & Engineering, Annamalai University, Tamil Nadu, India

DOI:

https://doi.org/10.51983/ajcst-2018.7.S1.1804

Keywords:

Retrieving Systems, Content Based Algorithm, Segmentation, Feature Extraction, Video Retrieval

Abstract

With the improvement of mixed media information composes and accessible transfer speed there is immense interest of video retrieving frameworks, as clients move from content based recovery frameworks to content based retrieval frameworks. Determination of removed features assume an imperative job in substance based video retrieving paying little mind to video qualities being under thought. This work assists the up and coming analysts in the field of video retrieving with getting the thought regarding distinctive procedures and strategies accessible for the video recovery. These highlights are proposed for choosing, ordering and positioning as indicated by their potential enthusiasm to the client. Great feature determination likewise permits the time and space expenses of the recovery procedure to be lessened. This overview surveys the fascinating highlights that can be separated from video information for ordering and retrieving alongside likeness estimation techniques. We likewise recognize present research issues in territory of content based video retrieving frameworks.

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Published

02-11-2018

How to Cite

Kalakoti, G., Prabhakaran, G., & Sudhakar, P. (2018). Content Based Video Retrieval Systems with Local Features: A Survey. Asian Journal of Computer Science and Technology, 7(S1), 58–62. https://doi.org/10.51983/ajcst-2018.7.S1.1804