CFP last date
20 May 2024
Reseach Article

Content based Image Retrieval System using Local Feature Extraction Techniques

by Abhishek Madduri
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 183 - Number 20
Year of Publication: 2021
Authors: Abhishek Madduri
10.5120/ijca2021921549

Abhishek Madduri . Content based Image Retrieval System using Local Feature Extraction Techniques. International Journal of Computer Applications. 183, 20 ( Aug 2021), 16-20. DOI=10.5120/ijca2021921549

@article{ 10.5120/ijca2021921549,
author = { Abhishek Madduri },
title = { Content based Image Retrieval System using Local Feature Extraction Techniques },
journal = { International Journal of Computer Applications },
issue_date = { Aug 2021 },
volume = { 183 },
number = { 20 },
month = { Aug },
year = { 2021 },
issn = { 0975-8887 },
pages = { 16-20 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume183/number20/32039-2021921549/ },
doi = { 10.5120/ijca2021921549 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-07T01:17:19.529666+05:30
%A Abhishek Madduri
%T Content based Image Retrieval System using Local Feature Extraction Techniques
%J International Journal of Computer Applications
%@ 0975-8887
%V 183
%N 20
%P 16-20
%D 2021
%I Foundation of Computer Science (FCS), NY, USA
Abstract

This article presents a Content Based Image Retrieval (CBIR) system based on SURF-ORB-AdaBoost methodology. Content-based image retrieval is a process that applies computer vision approaches for seeking and overseeing extensive image collections more efficiently. With the development of expansive digital image collections activated by fast advances in electronic capacity limit and processing power, there is a developing requirement for devices and computer systems to help productive browsing, searching, and retrieval for image collections. Hence, the aim of this article is to build up a content-based image retrieval system. In this article, the authors presented a combination of SURF and ORB features for image retrieval from a large image collection. Initially, SURF (Speeded Up Robust Features) and ORB (Oriented Fast Rotated and BRIEF) features are extracted from the given query image. Subsequently, K-Means clustering algorithm is used to analyze the data and the LPP dimensionality reduction method is used to reduce the space complexity of the system and increase the performance of the system. After that, classifier is applied to extract the relevant image. A precision rate of 97.8% has been reported using the proposed CBIR system for the Wang image dataset.

References
  1. Celik C, and Bilge HS 2017 Content based image retrieval with sparse representation and local feature descriptor: A comparative study. Pattern Recognition, 68(2):1-13.
  2. Batur A, Tursun G, Mamut M, Yadikar N, and Ubul K 2017 Uyghur Printed Document Image Retrieval Based on SIFT Features. International Congress of Information and Communication Technology (ICICT), 107:737-742.
  3. Srivastava P, and Khare A 2017 Integration of Wavelet Transform, Local Binary Patterns and Moments for Content-Based Image Retrieval. Journal of Visual Communication and Image Representation, 42:78-103.
  4. Cedillo-Hernandez M, Cedillo-Hernandez A, Nakano-Miyatake M, and Perez-Meana H 2014 Content Based Video Retrieval System for Mexican Culture Heritage based on Object Matching and Local-Global Descriptors. Proceedings of the International Conference on Mechatronics, Electronics and Automotive Engineering, 38-43.
  5. Atoum, Issa & Ayyagari, Maruthi Rohit. (2019). Effective Semantic Text Similarity Metric Using Normalized Root Mean Scaled Square Error. Journal of Theoretical and Applied Information Technology. 97. 3436-3447.
  6. Yasmin M, Sharif M, Irum I, and Mohsin S 2017 An Efficient Content Based Image Retrieval using EI Classification and Color Features. Journal of Applied Research and Technology, 877-885.
  7. Vinay A, Kumar CA, Shenoy GR, Murthy NKB, and Natarajan S 2015 ORB-PCA Based Feature Extraction Technique for Face Recognition. Procedia Computer Science, 58:614-621.
  8. http://wang.ist.psu.edu/docs/related/
  9. Ayyagari, M. R. (2019). Integrating Association Rules with Decision Trees in Object-Relational Databases. arXiv preprint arXiv:1904.09654.
  10. Zhuo L, Cheng B, and Zhang J 2014 A Comparative Study of Dimensionality Reduction Methods for Large-scale Image Retrieval, Neurocomputing, 141:202-210.
  11. Fadaei S, Amirfattahi R and Ahmadzadeh MR 2017 A New Content-Based Image Retrieval System Based on Optimized Integration of DCD, Wavelet and Curvelet Features. IET Image Processing, 11(2):89-98.
  12. Namdeo HD, and Jadhav PD 2015 Content Based Image Retrieval Using Color and Texture. International Journal of Electronics, Communication & Instrumentation Engineering, 5(3):81-88.
  13. Guo JM, and Prasetyo H 2015 Content-Based Image Retrieval Using Features Extracted from Halftoning-Based Block Truncation Coding. IEEE Transactions on Image Processing, 24(3):1010-1024.
  14. Ayyagari, Maruthi Rohit. (2019). Efficient Driving Forces to CMMI Development using Dynamic Capabilities. International Journal of Computer Applications. 178. 24-29. 10.5120/ijca2019919024.
  15. Srivastava P, and Khare A 2016 Content-Based Image Retrieval using Scale Invariant Feature Transform and Moments. Proceedings of IEEE Uttar Pradesh Section International Conference on Electrical, Computer and Electronics Engineering (UPCON), 162-166.
  16. Ayyagari, M. R. (2019). Cache Contention on Multicore Systems: An Ontology-based Approach. arXiv preprint arXiv:1906.00834.
  17. Youssef SM 2012 ICTEDCT-CBIR: Integrating Curvelet Transform with Enhanced Dominant Colors Extraction and Texture Analysis for Efficient Content Based Image Retrieval. Computer and Electrical Engineering, 38:1358-137.
Index Terms

Computer Science
Information Sciences

Keywords

CBIR SURF ORB K-Means LPP BayesNet Random Forest