List of Journals    /    Call For Papers    /    Subscriptions    /    Login
 
 
 
 
 SEARCH
By Author By Title
 
 
ABOUT CSC
 About CSC Journals
 CSC Journals Objectives
 List of Journals
 CALL FOR PAPERS
 Call For Papers CFP
 Special Issue CFP
AUTHOR GUIDELINES
 Submission Guidelines
 Peer Review Process
 Helpful Hints For Getting Published
 Plagiarism Policies
 Abstracting & Indexing
 Open Access Policy
 Submit Manuscript
 FOR REVIEWERS
 Reviewer Guidelines
 FOR EDITORIAL
 Editor Guidelines
 Join Us As Editor
 Launch Special Issue
 Suggest New Journal
 CSC LIBRARY
 Browse CSC Library
 Open Access Policy
  SERVICES
 Conference Partnership Program (CPP)
 Abstracting & Indexing
 SUBSCRIPTIONS
 Subscriptions
 Discounted Packages
 Archival Subscriptions
 How to Subscribe
 Librarians
 Subscriptions Agents
 Order Form
 DOWNLOADS
 
 
 
 
Discovering Color Styles from Fine Art Images of Impressionism
Full text
 PDF(375.8KB)
Source 
International Journal of Computer Science and Security (IJCSS)
Table of Contents
Download Complete Issue    PDF(3.52MB)
Volume:  3    Issue:  4
Pages:  272-333
Publication Date:   August 2009
ISSN (Online): 1985-1553
Pages 
314 - 324
Author(s)  
Man-Kwan Shan - Taiwan
 
Published Date   
21-10-2009 
Publisher 
CSC Journals, Kuala Lumpur, Malaysia
ADDITIONAL INFORMATION
Keywords   Abstract   References   Cited by   Related Articles   Collaborative Colleague
 
KEYWORDS:   Image mining, Painting style, Associative classification 
 
 
This Manuscript is indexed in the following databases/websites:-
1. Directory Of Open Access Journals (DOAJ)
2. Free-Books-Online
3. Scribd
4. Docstoc
5. PDFCAST
6. WorldCat
7. ScientificCommons
8. Google Scholar
9. CiteSeerX
10. refSeek
11. Academic Index
12. Bielefeld Academic Search Engine (BASE)
13. ResearchGATE
14. iSEEK
15. Socol@r
16. Academic Journals Database
17. Libsearch
18. slideshare
19. Chinese Directory Of Open Access
 
 
Content-based image retrieval (CBIR) has attracted much interest since the last decade. Finding painting styles from fine art images is useful for CBIR. However, little research has been done on the painting style mining. In this paper, we investigated the color style mining technique for fine art of Impressionism. Three design issues for the color style mining are the feature extraction, the feature representation, and the style mining algorithm. For the feature extraction and presentation, dominate colors, adjacent color combinations and some MPEG-7 color descriptors, are utilized to represent the color features. Above all, we utilize the spatial data structure, 2D string, to represent color layout descriptor. For the style mining algorithms, we proposed a two-stage color style mining scheme. The first stage discovers the common properties of paintings of the same style. The second stage discovers the discriminative properties among styles. The experiment on the art work of European Impressionist was conducted. The performance of effectiveness is measure by the classification accuracy of the proposed style mining scheme. The classification accuracy ranges from 70% to 90%. 
 
 
 
1 R. Agrawal and R. Srikant. “Fast Algorithms for Mining Association Rules”. In Proceedings of International Conference on Very Large Data Bases, 1994.
2 M. N. Anyanwu and S. G. Shiva. “Comparative Analysis of Serial Decision Tree Classification Algorithms”. International Journal of Computer Science and Security, 3(3) 2009.
3 S. F. Chang, T. Sikora, and A. Puri. “Overview of MPEG-7 Standard”. IEEE Transactions on Circuits Systems for Video Technology, 11(6), 2001.
4 S. K. Chang, Q. Y. Shi, and C. W. Yan. "Iconic Indexing by 2D Strings", IEEE Transactions on Pattern Analysis and Machine Intelligence, 9(3), 1987.
5 Y. Deng, and B. S. Manjunath. “Unsupervised Segmentation of Color-Texture Regions in Images and Video”. IEEE Transactions on Pattern Analysis and Machine Intelligence, 23(8), 2001.
6 B. Gunsel, S. Sariel, and O. Icoglu. “Content Based Access to Art Paintings”. In Proceedings of IEEE International Conference on Image Processing, 2005.
7 J. Han, and Y. Fu. “Discovery of Multiple-Level Association Rules from Large Databases”. IEEE Transactions on Knowledge and Data Engineering, 11(5), 1999.
8 P. S. Hiremath and J. Pujari. “Content Based Image Retrieval based on Color, Texture and Shape features using Image and Its Complement”. International Journal of Computer Science and Security, 1(4), 2007.
9 L. Leslie, T. S. Chua and R. Jain. “Annotation of Paintings with High-level Semantic Concepts Using Transductive Inference and Ontology-based Concept Disambiguation”. In Proceedings of ACM International Conference on Multimedia, 2007.
10 C. T. Li, and M. K. Shan. “Affective Space Exploration for Impressionism Paintings”. In Proceedings of Pacific-Rim Conference on Multimedia, 2008.
11 B. Liu, W. Hsu, and Y. Ma. “Integrating Classification and Association Rule Mining”. In Proceedings of ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 1998.
12 B. Liu, Y. Ma and C. K. Wong. “Classification Using Association Rules: Weaknesses and Enhancements”. In Vipin Kumar, et al, (eds), Data Mining for Scientific Applications, 2001.
13 Y. Marchenko, T. S. Chua, I. Aristarkhova. “Analysis and Retrieval of Painting Using Artistic Color Concepts”. In Proceedings of IEEE International Conference on Multimedia and Expo., 2005.
14 MPEG-7 Visual Experimentation Model (XM), Version 10.0, ISO/IEC/JTC1/SC29/WG11, Doc. N4063, 2001.
15 Overview of the MPEG-7 Standard, Version 5.0, Final Committee Draft, ISO/IEC JTC1/SC29/WG11, Doc. N4031, 2001.
16 K. Preetham and V. S. Ananthanarayana. “Discovery of Frequent Itemsets Based on Minimum Quality and Support”. International Journal of Computer science and Security, 3(3), 2009.
17 J. R. Quinlan. “C4.5: Programs for Machine Learning”, Morgan Kaufmann, San Mateo, CA (1993)
18 J. R. Quinlan. “Improved Use of Continuous Attributes in C4.5”, Journal of Artificial Intelligence Research, 4, 1996.
19 R. Sablatnig, P. Kammerer and E. Zolda. “Hierarchical Classification of Painted Portraits using Face and Brush Stroke Models”. In Proceedings of International Conference on Pattern Recognition, 1998.
20 A. Vailaya, A. T. Figueriedo, A. K. Jain and H. J. Zhang. “Image Classification for Content- Based Indexing”. IEEE Transactions on Image Processing, 10(1), 2001.
21 J. Z. Wang, J. Li, and G. Wiederhold. “SIMPLIcity: Semantics-Sensitive Integrated Matching for Picture Libraries”. IEEE Transactions on Pattern Analysis and Machine Intelligence, 23(9), 2001.
22 L. Y. Wei, and M. K. Shan, “Efficient Mining of Spatial Co-orientation Patterns from Image Databases”. In Proceedings of IEEE International Conference on Systems, Man and Cybernetics, 2006.
23 O. R. Zaïane, M. Antonie and A. Coman, “Mammography Classification by an Association Rule-Based Classifier”. In Proceedings of International ACM SIGKDD Workshop on Multimedia Data Mining, 2002,
24 A. Shamir and E. Tromer, "Factoring Large Numbers with the TWIRL Device", Crypto 2003, LNCS 2729, Springer-Verlag, Aug.2003.
 
 
 
1 M. K. Shan and L. Y. Wei, “Algorithms for Discovery of Spatial Co-Orientation Patterns from Images”, Expert Systems with Applications: An International Journal, 37(8), pp. 5795–5802, 2010.
2 V. J. Vivek , N. Chandrasekar and Y. Srinivas, “Improving Seismic Monitoring System for Small to Intermediate Earthquake Detection”, International Journal of Computer Science and Security (IJCSS), 4(3), pp. 308 – 315, 2010.
 
 
 
1 DOC-TXT
 
2 printfu
 
3 yasni
 
4 shendusou.com
 
5 National Chengchi University Department of Computer Science
 
6 Villanova University
 
7 Ebookpp.com
 
8 Haitos
 
 
 
Man-Kwan Shan : Colleagues  
 
 
 
  Untitled Document
 
Copyrights (c) 2012 Computer Science Journals. All rights reserved.
Best viewed at 1152 x 864 resolution. Microsoft Internet Explorer.
 
  
 
Copyrights & Usage: Articles published by CSC Journals are Open Access. Permission to copy and distribute any other content, images, animation and other parts of this website is prohibited. CSC Journals has the rights to take action against individual/group if they are found victim of copying these parts of the website.