Vol 5 No 7 (2019): IJRDO - Journal of Computer Science Engineering | ISSN: 2456-1843
Articles

Image Search Engine of Mono Image

Mohammed Ali
University of Information Technology and Communication
Asmaa Salah Aldin Ibrahim
Baghdad College of Economic Sciences University
Published September 1, 2019
Keywords
  • Image processing,
  • Search Image,
  • Mono Image,
  • Search by Image
How to Cite
Mohammed Ali, & Asmaa Salah Aldin Ibrahim. (2019). Image Search Engine of Mono Image. IJRDO - Journal of Computer Science Engineering (ISSN: 2456-1843), 5(7), 11-21. Retrieved from https://ijrdo.org/index.php/cse/article/view/3038

Abstract

In recent year, images are widely used in many applications, such as facebook, snapchat. The large numbers of these images are saved in the smart system to easy access and retrieve. This paper aims to design and implement the new algorithm which is used in search of images. The mono image (black and white) is used as input data to the proposed algorithm. The methodology of this paper is to split image into number of block (block size = 8*8).  For each block set 1 or 0 in order to count the number of black and white pixels.  Finally, the result compare with other image dataset with the threshold value. The result show's that the proposed algorithm is successful passed in tested stage.

Downloads

Download data is not yet available.

References

  1. Swets, D.L. and J.J. Weng, Using discriminant eigenfeatures for image retrieval. IEEE Transactions on pattern analysis and machine intelligence, 1996. 18(8): p. 831-836.
  2. Abdel-Mottaleb, M.S. and S. Krishnamachari, Image retrieval system using a query image. 2001, Google Patents.
  3. Jain, A.K. and A. Vailaya, Image retrieval using color and shape. Pattern recognition, 1996. 29(8): p. 1233-1244.
  4. Smith, J.R. Image retrieval evaluation. in Proceedings. IEEE Workshop on Content-Based Access of Image and Video Libraries (Cat. No. 98EX173). 1998. IEEE.
  5. Cho, S.-B. and J.-Y. Lee, A human-oriented image retrieval system using interactive genetic algorithm. IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans, 2002. 32(3): p. 452-458.
  6. Kulkarni, A. and L. Brown, Association-Based Image Retrieval. 2009.
  7. Can, E.F., et al., System for expanding image search using attributes and associations. 2019, US Patent App. 15/944,163.
  8. Iyer, S., S. Chaturvedi, and T. Dash, Image Captioning-Based Image Search Engine: An Alternative to Retrieval by Metadata, in Soft Computing for Problem Solving. 2019, Springer. p. 181-191.