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

IMAGE DETECTIVE: EFFICIENT IMAGE RETRIEVAL SYSTEM

N. D. Pawar, V. H. Sakore, P. N. Shendage, N. K. Shevate

Abstract: With the wide - spread use of image retrieval in various areas such as crime investigation, medical diagnosis, intellectual property rights, etc, today’s need is to enhance the image retrieval process. In our research, we are combining Text Based Image Retrieval (TBIR) method with Content Based Image Retrieval (CBIR) method to enhance image retrieval. The base of CBIR is to extract different image features, such as Color, Shape and Texture. To improve the accuracy, we are using combination of most efficient feature extraction algorithms. We are using RGB to Lab conversion for color feature extraction, Modified Canny edge detection algorithm with variable sigma for shape feature extraction, Framelet transform method for texture feature extraction. For improving the speed of image retrieval process using TBIR, we are implementing automatic annotation technique. Images are annotated automatically without human intervention. It improves speed. Approximately one to two thousand images are stored in the database. Features are extracted from these images and stored into the database. Query images are processed in the similar way and similarity matching between query and database images is done through Hybrid Graph method. For that purpose, we have to generate image to image graph from extracted feature vectors and image to tag graph from database. Combining both these graphs, we get the Hybrid graph. Thus, the process of image retrieval is becoming efficient in both terms accuracy and time. Also, user can give input in terms of query image or textual query or sketch. This improves human – friendliness of this system.

Keywords: feature extraction, Lab, Modified Canny detection, Framelet transform, automatic annotation, similarity matching, Hybrid Graph, etc.

DOI: https://doi.org/10.15623/ijret.2014.0312043

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