IJRET
  • CrossRef
  • Google Scholar
  • ischolar
  • Index Copernicus
  • IJRET
  • Alternate Text
  • IJRET
  • IJRET
  • IJRET
  • Alternate Text
  • IJRET
  • IJRET
  • IJRET
  • IJRET
  • IJRET
  • IJRET
  • IJRET
Authors will receive one hard copy of full paper, individual print certificates and digital certificates, Submit Manuscript

CALL FOR PAPERS : DEC-2018

Submission Last Date :  30-Dec-2018
Acceptance Notification :  in 15 days
Publication Date :  in 5 days
Submit Manuscript Online

FOR AUTHORS

FOR REVIEWERS

IJRET® PUBLICATIONS

DOWNLOADS

CONTACT US

NEWS & UPDATES

Call for Paper Vol-7 Iss-02 Feb-2018

IJRET invites papers from various engineering disciplines for Volume-07 Issue-02, Feb-2018.

Submit Manuscript

Published Vol-07 Iss-01 Jan-18

IJRET Volume-07 Issue-01, Jan-2018 is published now.

Browse Papers

VIDEO COPY DETECTION USING SEGMENTATION METHOD AND MPEG-7 DESCRIPTORS

Girija K, Sabarinathan P, Saravanan D, Uma M

Abstract: There are a number of methods available for video copy detection. Some of the methods were employing the application of local and global descriptors which were found to be ineffective in detections involving complex transformations. In order to overcome the above specified inefficiency, Scale Invariant Feature Transform (SIFT) descriptor came into picture but was found to have a high computational cost. The method proposed in this paper involving five different types of MPEG-7 descriptors namely Color and Edge Directivity Descriptor (CEDD), Fuzzy Color and Texture Histogram (FCTH), Scalable Color Descriptor (SCD), Edge Histogram Descriptor (EHD), Color Layout Descriptor (CLD) for extracting the features of the frames in the selected video is found to be cost effective and efficient even in case of high level of transformations. This paper also throws light on certain improvements in graphbased video sequence matching method which is used to overcome the level of noise, to detect videos with different frame rates and optimal sequence matching is found automatically from the disordered video sequences by applying spatial features during copy detection. Experimental results have showed that the proposed method is far effective than the previously existing video detection scenarios

Keywords: Video copy detection, graph, SIFT feature, SVD, CEDD, FCTH, SCD, EHD, CLD descriptor,

DOI: https://doi.org/10.15623/ijret.2014.0319088

Home | Publication Ethics | Privacy Policy | Terms & Conditions | Refund Policy | Feedback | Contact Us
Copyright © 2012-2018 IJRET Journal All rights reserved