CBIR Search Engine for User Designed Query (UDQ)

Tatiana Jaworska

Abstract

At present, most Content-Based Image Retrieval (CBIR) systems use query by example (QBE), but its drawback is the fact that the user first has to find an image which he wants to use as a query. In some situations the most difficult task is to find this one proper image which the user keeps in mind to feed it to the system as a query by example. For our CBIR, we prepared the dedicated GUI to construct a user designed query (UDQ). We describe the new search engine which matches images using both local and global image features for a query composed by the user. In our case, the spatial object location is the global feature. Our matching results take into account the kind and number of objects, their spatial layout and object feature vectors. Finally, we compare our matching result with those obtained by other search engines.

References

  1. Arandjelovic, R. & Zisserman, A., 2012. Three things everyone should know to improve object retrieval. Providence, RI, USA, s.n., pp. 2911-2918.
  2. Azimi-Sadjadi, M. R., Salazar, J. & Srinivasan, S., 2009. An Adaptable Image Retrieval System With Relevance Feedback Using Kernel Machines and Selective Sampling. IEEE Transactions on Image Processing, 18(7), pp. 1645-1659.
  3. Candan, S. K. & Li, W.-S., 2001. On Similarity Measures for Multimedia Database Applications. Knowledge and Information Systems, Volume 3, pp. 30-51.
  4. Candes, E., Demanet, L., Donoho, D. & Ying, L., 2006. Fast Discrete Curvelet Transforms, pp. l-44.: raport.
  5. Chang, C.-C. & Wu, T.-C., 1995. An exact match retrieval scheme based upon principal component analysis. Pattern Recognition Letters, Volume 16, pp. 465-470.
  6. Deng, J., Krause, J., Berg, A. & Fei-Fei, L., 2012. Hedging Your Bets: Optimizing Accuracy-Specificity Trade-offs in Large Scale Visual Recognition. Providence, RI, USA, s.n., pp. 1-8.
  7. Fayyad, U. M. & Irani, K. B., 1992. The attribute selection problem in decision tree generation. s.l., s.n., pp. 104- 110.
  8. Guru, D. S. & Punitha, P., 2004. An invariant scheme for exact match retrieval of symbolic images based upon principal component analysis. Pattern Recognition Letters , Volume 25, pp. 73-86.
  9. Ishibuchi, H. & Nojima, Y., June 27-39, 2011. Toward Quantitative Definition of Explanation Ability of Fuzzy Rule-Based Classifiers. Taipei, Taiwan, IEEE Society, pp. 549-556.
  10. Jaworska, T., 2007. Object extraction as a basic process for content-based image retrieval (CBIR) system. Opto-Electronics Review, Dec., 15(4), pp. 184-195.
  11. Jaworska, T., 2008. Database as a Crucial Element for CBIR Systems. Beijing, China, World Publishing Corporation, pp. 1983-1986.
  12. Jaworska, T., 2011. A Search-Engine Concept Based on Multi-Feature Vectors and Spatial Relationship. In: H. Christiansen, et al. eds. Flexible Query Answering Systems. Ghent: Springer, pp. 137-148.
  13. Jaworska, T., 2014. Application of Fuzzy Rule-Based Classifier to CBIR in comparison with other classifiers. Xiamen, China, IEEE, pp. 1-6.
  14. Jaworska, T., 2014. Spatial representation of object location for image matching in CBIR. In: A. Zgrzywa, K. Choros & A. Sieminski, eds. New Research in Multimedia and Internet Systems. Wroclaw: Springer, pp. 25-34.
  15. Lowe, D. G., 1999. Object Recognition from local scaleinvariant features. Corfu, Greece, s.n., pp. 1150-1157.
  16. Lowe, D. G., 2004. Distinctive Image Features from Scale-Invariant Keypoints. International Journal of Computer Vision, 60(2), pp. 91-110.
  17. Mikolajczyk, K. & Schmid, C., 2004. Scale & Affine Invariant Interest Point Detectors. International Journal of Computer Vision, pp. 63-86.
  18. Rish, I., 2001. An empirical study of the naive Bayes classifier. s.l., s.n., pp. 41-46.
  19. Sharma, G. & Jurie, F., 2011. Learning discriminative spatial representation for image classification. Dundee, s.n., pp. 1-11.
  20. Smeulders, A. W. M. et al., 2000. Content-Based Image Retrieval at the End of the Early Years. IEEE Transactions on Pattern Analysis and Machine Intelligence, Dec, 22(12), pp. 1349-1380.
  21. Smith, J. R. & Chang, S.-F., 1999. Integrated spatial and feature image query. Multimedia Systems, Issue 7, pp. 129-140.
  22. Tuytelaars, T. & Mikolajczyk, K., 2007. Local Invariant Feature Detectors: A Survey. Computer Graphics and Vision, 3(3), pp. 177-280.
  23. Urban, J., Jose, J. M. & van Rijsbergen, C. J., 2006. An adaptive technique for content-based image retrieval. Multimedial Tools Applied, July, Issue 31, pp. 1-28.
  24. Wang , Z., Bovik, A. C., Sheikh, H. R. & Simoncelli, E. P., 2004. Image Qualifty Assessment: From Error Visibility to Structural Similarity. IEEE Transactions on Image Processing, April, 13(4), pp. 600-612.
  25. Wang, T., Rui, Y. & Sun, J.-G., 2004. Constraint Based Region Matching for Image Retrieval. International Journal of Computer Vision, 56(1/2), pp. 37-45.
  26. Xiao , B., Gao, X., Tao, D. & Li, X., 2011. Recognition of Sketches in Photos. In: W. Lin, et al. eds. Multimedia Analysis, Processing and Communications. Berlin: Springer-Verlag, pp. 239-262.
  27. Zhang, L., Wang, L. & Lin, W., 2012. Conjunctive patches subspace learning with side information for collaborative image retrieval. IEEE Transactions on Image Processing, 21(8), pp. 3707-3720.
  28. Zhang, Y.-J., Gao, Y. & Luo, Y., 2004. Object-Based Techniques for Image Retrieval. In: S. Deb, ed. Multimedia Systems and Content-Based Image Retrieval. Hershey, London: IDEA Group Publishing, pp. 156-181.
Download


Paper Citation


in Harvard Style

Jaworska T. (2015). CBIR Search Engine for User Designed Query (UDQ) . In Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - Volume 1: KDIR, (IC3K 2015) ISBN 978-989-758-158-8, pages 372-379. DOI: 10.5220/0005614703720379


in Bibtex Style

@conference{kdir15,
author={Tatiana Jaworska},
title={CBIR Search Engine for User Designed Query (UDQ)},
booktitle={Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - Volume 1: KDIR, (IC3K 2015)},
year={2015},
pages={372-379},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0005614703720379},
isbn={978-989-758-158-8},
}


in EndNote Style

TY - CONF
JO - Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - Volume 1: KDIR, (IC3K 2015)
TI - CBIR Search Engine for User Designed Query (UDQ)
SN - 978-989-758-158-8
AU - Jaworska T.
PY - 2015
SP - 372
EP - 379
DO - 10.5220/0005614703720379