COMPREHENSIVE STUDY ON CONTENT BASED IMAGE RETRIEVAL WITH THEIR FEATURES

Authors

  • Pritpal kaur Research Scholar, Department of Computer Engineering, CTIEMT, Jalandhar
  • Sukhvir Kaur Assistant Professor, Department of Computer Engineering, CTIEMT, Jalandhar

DOI:

https://doi.org/10.24297/ijct.v16i6.6348

Keywords:

Content based image retrieval (CBIR), color histogram, color, shape, texture features

Abstract

In current years, very huge collections of images and videos have grown swiftly. In parallel with this boom, content-based image retrieval and querying the indexed collections of images from the large database are required to access visible facts and visual information. Three of the principle additives of the visual images are texture, shape and color. Content based image retrieval from big sources has a wide scope in many application areas and software’s. To accelerate retrieval and similarity computation, the database images are analyzed and the extracted regions are clustered or grouped together with their characteristic feature vectors. As a result of latest improvements in digital storage technology, it's easy and possible to create and store the large quantity of images inside the image database. These collections may additionally comprise thousands and thousands of images and terabytes of visual information like their shape, texture and color. For users to make the most from those image databases, efficient techniques and mechanisms of searching should be devised. Having a computer to do the indexing primarily based on a CBIR scheme attempts to deal with the shortcomings of human-based indexing. Since an automated process on a computer can analyze and process the images at a very quick and efficient rate that human can never do alone. In this paper, we will discuss the structure of CBIR with their feature vectors.

Downloads

Download data is not yet available.

References

[1] M. Fakheri, T. Sedghi, M. G. Shayesteh1 and M. C. Amirani, "Framework for image retrieval using machine learning and statistical similarity matching techniques," IET Image Process, pp. 1-11, 2013.
[2] P. MANIPOONCHELVI and K. MUNEESWARAN, "Multi region based image retrieval system," Indian Academy of Sciences, pp. 333-344, 2014.
[3] H. J´egou, M. Douze, C. Schmid and P. P´erez, "Aggregating local descriptors into a compact image representation," IEEE, pp. 3304-3311, 2010.
[4] Y. Chen, J. Z. Wang and R. Krovetz, "CLUE: Cluster-Based Retrieval of Images by Unsupervised Learning," IEEE, pp. 1187-1201, 2005.
[5] R. Fergus, L. Fei-Fei, P. Perona and A. Zisserman, "Learning Object Categories from Google’s Image Search," IEEE, 2005.
[6] Y. Chen, X. Li, A. Dick and A. v. d. Hengel, "Boosting Object Retrieval with Group Queries," IEEE, pp. 765-768, 2012.
[7] R. Arandjelovi´c and A. Zisserman, "Three things everyone should know to improve object retrieval," IEEE, pp. 2911-2918, 2012.
[8] M. Perd'och, Chum and J. Matas, IEEE, pp. 9-16, 2009.
[9] S. A. Chatzichristofis and Y. S. Boutalis, "CEDD: Color and Edge Directivity Descriptor: A Compact Descriptor for Image Indexing and Retrieval," Springer-Verlag Berlin Heidelberg, pp. 313-322, 2008.
[10] Y. Chen and J. Z. Wang, "A Region-Based Fuzzy Feature Matching Approach to Content-Based Image Retrieval," IEEE, pp. 1252-1267, 2002.
[11] C.-H. Lin, R.-T. Chen and Y.-K. Chan, "A smart content-based image retrieval system based on color and texture feature," ELSEVIER, p. 658–665, 2009.
[12] Z. Wang, J. Li and G. Wiederhold, "SIMPLIcity: Semantics-Sensitive Integrated Matching for Picture LIbraries," IEEE, pp. 947-963, 2001.
[13] S. Gandhani, R. Bhujade and A. Sinhal, "AN IMPROVED AND EFFICIENT IMPLEMENTATION OF CBIR SYSTEM BASED ON COMBINED FEATURES," IET, pp. 353-359.
[14] S. M. H. Khan, A. Hussain and I. F. T. Alshaikhl, "Comparative study on Content Based Image Retrieval (CBIR)," IEEE, pp. 61-66, 2013.
[15] Sreedevi S. and Shinto Sebastian, "Fast Image Retrieval with Feature Levels," IEEE, 2013.
[16] S. Ezekiel, Mark G. Alford, David Ferris and Eric Jones,, "Multi-Scale Decomposition Tool for Content Based Image Retrieval," IEEE, 2013.
[17] K. Juneja, A. Verma , S. Goel and S. Goel , "A Survey on Recent Image Indexing and Retrieval Techniques for Low-level Feature Extraction in CBIR systems," IEEE, pp. 67-72, 2015.
[18] K. BELATTAR and S. MOSTEFAI, "CBIR using Relevance Feedback: Comparative Analysis and Major Challenges," IEEE, pp. 317-325, 2013.
[19] D. Jeyabharathi and A. Suruliandi, "Performance Analysis of Feature Extraction and Classification Techniques in CBIR," IEEE, pp. 1211-1214, 2013.
[20] H. Xie, Y. Ji and Y. Lu, "An Analogy-Relevance Feedback CBIR Method Using Multiple Features," IEEE, pp. 83-86, 2013.
[21] B. Kaur and S. Jindal, "An implementation of Feature Extraction over medical images on OPEN CV Environment".
[22] S. Kumar, S. Jain and T. Zaveri, "ARALLEL APPROACH TO EXPEDITE MORPHOLOGICAL FEATURE EXTRACTION OF REMOTE SENSING IMAGES FOR CBIR SYSTEM," IEEE, pp. 2471-2474, 2014.
[23] K. BELATTAR and S. MOSTEFAI, "CBIR with RF: which Technique for which Image," IEEE, 2013.
[24] G. Raghuwanshi and V. Tyagi, "Texture image retrieval using adaptive tetrolet transforms," ELSEVIER, pp. 1-8, 2015.

Downloads

Published

2017-09-14

How to Cite

kaur, P., & Kaur, S. (2017). COMPREHENSIVE STUDY ON CONTENT BASED IMAGE RETRIEVAL WITH THEIR FEATURES. INTERNATIONAL JOURNAL OF COMPUTERS &Amp; TECHNOLOGY, 16(6), 6962–6967. https://doi.org/10.24297/ijct.v16i6.6348

Issue

Section

Research Articles