publication . Article . Preprint . 2018

A Modified Image Comparison Algorithm Using Histogram Features

Anas Al-Oraiqat;
  • Published: 31 Mar 2018
This article discuss the problem of color image content comparison. Particularly, methods of image content comparison are analyzed, restrictions of color histogram are described and a modified method of images content comparison is proposed. This method uses the color histograms and considers color locations. Testing and analyzing of based and modified algorithms are performed. The modified method shows 97% average precision for a collection containing about 700 images without loss of the advantages of based method, i.e. scale and rotation invariant.
arXiv: Computer Science::Computer Vision and Pattern Recognition
ACM Computing Classification System: ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION
free text keywords: Computer Science - Computer Vision and Pattern Recognition
21 references, page 1 of 2

1) E. A. Bashkov & Kostiukiva, “The evaluation of the image retrieval efficiency with use of 2d-color histograms,” Management and Informatics Problem, No. 6, pp. 84-89, 2006.

2) N. S. Vasileva & B. A. Novikov, “The construction of correspondences between low-level characteristics & semantics of static images, “Electronic Libraries: Perspective Methods and Technologies - Electronic Collections,” Works of The 7th All-Russian Scientific Conference, Yaroslavl, 2005.

3) M. J. Swain & D. H. Ballard, “Color Indexing,” International Journal of Computer Vision, Vol. 7(1), pp. 11-32, 1991.

4) H. Tamura, S. Mori & T. Yamawaki, “Textural features corresponding to visual perception,” IEEE Systems, Man, and Cybernetics Society, Vol. 8(6), pp. 460-473, 1978.

5) B. S. Manjunath & W. Y. Ma, “Texture features for browsing and retrieval of image data,” IEEE Transactions of Pattern Analysis and Machine Intelligence, Vol. 18(8), pp. 837-842, 1996.

6) D. Zhang & G. Lu, “Content-Based Shape Retrieval Using Different Shape Descriptors,” A Comparative Study, In IEEE International Conference on Multimedia and Expo, pp. 289-293, 2001.

7) Y. Rubner & C. Tomasi, “A Metric for Distributions with Applications to Image Databases,” In Proceeding of the Sixth International Conference on Computer Vision, IEEE Computer Society, p. 59, 1998.

8) I. V.Rudakov & I. M. Vasiutovich, “The Study of Perceptive Cash-Functions of the Images,” Science and Education, Journal of Moscow State Technical University named after Bauman, No.8, 2015.

9) L. E. Chalaya & P. Yu. Popadenko, “Search for Incomplete Copies in Digital Image Analysis System,” Bulleting of Kremenchug National University named after Mykhailo Ostrogradskiy, No. 5(88), pp. 42- 47, 2014.

10) G. D. Ognevoy, “Methods and Algorithms for Image Retrieval,” The IInd International Scientific and Technical Internet, Conference, 2014,, (Accessed on 21 Aug, 2017).

11) “Looks alike,” Principles of Perceptive cash,, (Accessed on 15 Sep., 2017).

12) E. Ardizzone, M. La Cascia & D. Molinell, “Motion and Color Based Video Indexing and Retrieval,” Proceedings of the 13th International Conference on, Pattern Recognition, 1996.

13) E. Ardizzone, M. La Cascia, Vito di Gesu & C. Valenti, “Content Based Indexing of Image and Video Databases by Clobal and Shape Features,” 1996.

14) N. S. Baigarova, Yu. A. Bukhshta & A. A. Gornyi, “Visual Data Indexation and Retrieval Methods,” Preprint of Application Mathematics Institute named after M. V. Kledysh, Russian Academy of Science, No.7, 2000.

15) J. R. Smith & Shih-Fu Chang “Tools and Techniques for Color Image Retrieval,” Columbia University Department of Electrical Engineering and Center for Telecommunications Research, 1996, publications/ 96/smith96b.pdf, (Accessed on 10 Oct., 2017).

21 references, page 1 of 2
Powered by OpenAIRE Open Research Graph
Any information missing or wrong?Report an Issue
publication . Article . Preprint . 2018

A Modified Image Comparison Algorithm Using Histogram Features

Anas Al-Oraiqat;