Open Access Open Access  Restricted Access Subscription or Fee Access

Graphical User Interface of Efficient Image Quality Assessment Using New Similarity Metrics

Neetesh Gupta, Dr. Vijay Anant Athavale, MD. Ilyas Khan

Abstract


Digital imagery has expanded its horizon in many directions, resulting in an explosion in the volume of image data required to be organized. While most traditional image retrieval systems perform searches using comparisons of text based strings, content based systems extract features from the content of an image to judge its similarity with another. For the purpose of image retrieval is presented in this paper. The image retrieval problem is motivated by the need to search the exponentially increasing space of image and video databases efficiently and effectively. We Extract Low level feature like as color, Texture, shape etc. and calculate similarity or dissimilarity between archieve of images. Finally we implement a user friendly Graphical system with Relevance feedback of image retrieval and finally quality assessment of similarity is evaluated

Keywords


CBIR, Color, Texture, Shape Feature Extraction, Image Assessment, GUI, Similarity Measurement,

Full Text:

PDF

References


N Gupta, N Bhargava, Dr. B Verma “A New Approach for CBIR Using Coefficient of Correlation”, on 28-29 Dec 2009, Published in IEEE CS Digital Library and IEEE Xplore TM Digital Library, On Page(s): 380-384.

Guha, S., Rastogi, R., Shim, K., (1998), “CURE: An Efficient Clustering Algorithm for Large Databases,” Proc. of ACM SIGMOD International Conference on Management of Data, pp.73-84.

M. Stricker, and M. Orengo, “Similarity of Color Images,” in Proc. SPIE Storage and Retrieval for Image and Video Databases, pp. 381-392, Feb. 1995.

D.Lowe, “Distinctive image features from scale invariant keypoints”, International Journal of Computer vision, vol. 2(6), pp.91-110, 2004.

A. M. Eskicioglu and P. S. Fisher, "Image quality measures and their Performance," IEEE Transactions on Communications, vol. 43, no. 12, pp. 2959-2965, Dec. 1995.

K.P. Ajitha Gladis, K.Ramar, “A Novel Method for Content Based Image Retrieval Using the Approximation of Statistical Features, Morphological Features and BPN Network”, IEEE computer society ICCIMA 2007 ,Vol. 148 , PP. 179-184

Ritendra Datta, Dhiraj Joshi, Jia Li and James Wang, "Image Retrieval: Ideas, Influences, and Trends of the New Age", Proceedings of the 7th ACM SIGMM international workshop on Multimedia information retrieval, November 10-11, 2005, Hilton, Singapore.

Tienwei Tsai, Te-Wei Chiang, and Yo-Ping Huan, “Image Retrieval Approach Using Distance, Threshold Pruning”, IEEE Trans. On Image Processing 2007, Vol.12, PP.241-249.

S. Newsam and C. Kamath, “Comparing shape and texture features for pattern recognition in simulation data,” in SPIE Electronic Imaging, San Jose,CA, January 2005, pp. 106–117.

P. Howarth and S.Ruger, "Robust texture features for still-image retrieval", IEEE. Proceedings of Visual Image Signal Processing, Vol. 152, No. 6, December 2005.

ChengjunLiu,”ABayesian Discriminating Features Method for Face Detection”, IEEETrans PAMI, Vol. 25, No. 6, June 2003.

R. Rahamani, S. Goldman, H. Zhang, J. Krettek and J. Fritts, “Localized content-based image retrieval”, ACM workshop on Multimedia Image Retrieval, pp. 227-236, 2005.

Carson, S. Belongie, H. Greenspan, J. Malik, “Blobworld Image segmentation using Expectation Maximization and its Applications to Querying Images” IEEE Trans PAMI, Vol. 24, No. 8, 2002

A. Adjeroh and M. C. Lee, “On ratio-based color indexing,” IEEE Trans.Image Processing, , vol. 10, no. 1, pp. 36– 48, 2001

A.A.Goodrum, “Image Information retrieval” : An overview of current research, vol. 3, no. 2, 2000

K. Hachimura and A. Tojima. Image retrieval based on compositional featureand interactive query specification. In IAPR International

D.Lowe, "Distinctive image features from scale invariant keypoints", International Journal of Computer vision, vol. 2(6), pp.91-110, 2004.

M. K. Mandal, F. Idris, and S. Panchanathan, “A critical evaluation of image and video indexing techniques in the compressed domain,” Image and Vision Computing, vol. 17, no. 7, pp. 513–529, May 1998.

Muller, H., Muller, W., Squire, D.M., Marchand-Maillet, S., Pun, T. “ Performance evaluation in content-based image retrieval: overview and proposals” Pattern Recognition Letters 22 (2001) 593–601

Lindberg. “Feature detection with automatic scale selection.” International Journal of Computer Vision, 30(2):79–116, 1998.

Y. Rui, T. S. Huang and S. Chang, “Image Retrieval: Current Techniques, Promising Directions and Open Issues”, Journal of Visual Communication and Image Representation, vol. 10, pp. 39-62, March 1999.

W. Y. Ma and B. S. Manjunath, “Texture features and learning similarity”, in Proc. IEEE Conf. on Computer Vision and Pattern Recognition, 1996, pp. 425–430.

J. Vogel and B. Schiele, “On Performance Characterization and Optimization for Image Retrieval”, 7th European Conference on Computer Vision, Springer, 49-63 (2002).

P. Duygulu, K. Barnard, J. F. G. D. Freitas, and D. A. Forsyth, “Object recognition as machine translation: Learning a lexicon for a fixed image vocabulary”, The Seventh European Conference on Computer Vision, IV: 97-112 (2002).

Ville Viitaniemi and Jorma Laaksonen. “Techniques for still image scene lassification and object detection” In Proc. of ICANN 2006, volume 2, pages 35–44, Athens, Greece, September 2006. Springer.


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.