|
ABSTRACT
Browsing and finding pictures in large-scale and heterogeneous collections is an important issue, most particularly for online photo sharing applications. Since such services are experiencing rapid growth of their databases, the tag-based indexing strategy and the results displayed in a traditional matrix representation may not be optimal for browsing and querying image collections. Naturally, unsupervised data clustering appeared as a good solution by presenting a summarized view of an image set instead of an exhaustive but useless list of its element. We present a new method for extracting meaningful and representative clusters based on a shared nearest neighbors (SNN) approach that treats both content-based features and textual descriptions (tags). We describe, discuss and evaluate the SNN method for image clustering and present some experimental results using the Flickr collections showing that our approach extracts representative information of an image set.
REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
| |
1
|
|
 |
2
|
Deng Cai , Xiaofei He , Zhiwei Li , Wei-Ying Ma , Ji-Rong Wen, Hierarchical clustering of WWW image search results using visual, textual and link information, Proceedings of the 12th annual ACM international conference on Multimedia, October 10-16, 2004, New York, NY, USA
[doi> 10.1145/1027527.1027747]
|
 |
3
|
|
| |
4
|
Csurka, G., Dance C.R., Fan, L., Willamowski, J., Bray C., Visual categorization with bags of keypoints. In Proc. of ECCV Workshop on Statistical Learning in Computer Vision, pages 1--22, 2004
|
| |
5
|
Ertoz, L., Steinback, M., Kumar, V. Finding clusters of different size, shapes and densities in noisy, high dimensional data, SIAM International Conference on Data Mining (SDM '03). 2003
|
| |
6
|
Ertoz, L., Steinback, M., Kumar, V. Finding topics in documents, a shared nearest neighbors approach. Clustering and Information Retrieval, Kluwer Academic Publishers. 2002
|
| |
7
|
Goldberger, J., Gordon, S., Greenspan, H. Unsupervised image-set clustering using an information theoretic framework. IEEE Trans. on Image Processing, 15(2):449--458, 2006
|
| |
8
|
Hegland, M. Data mining, challenges, models, methods and algorithms, 2003
|
| |
9
|
|
 |
10
|
|
 |
11
|
|
| |
12
|
|
 |
13
|
|
| |
14
|
|
| |
15
|
Liao, W.K., A parallel K-Means data clustering: www.ece.northwestern.edu/~wkliao/Kmeans/index.html
|
| |
16
|
|
| |
17
|
Mathieu, B., Besancon, R., Fluhr, C. Multilingual document clusters discovery, Recherche d'Information Assistée par Ordinateur, RIAO'2004, 1--10. Avignon, France, 2004
|
| |
18
|
Simon, I., Snavely, N., Seitz, S.M. Scene Summarization for Online Image Collections, ICCV 2007, Rio de Janeiro, Brazil, Ocotber 14-20, 2007
|
| |
19
|
Sivic, J. Efficient visual search of images and videos, PhD thesis (2006), University of Oxford
|
| |
20
|
|
| |
21
|
Wang, H.B., Yu, Y.Q., Zhou, D.R., Meng B. Fuzzy nearest neighbor clustering of high-dimensional data, International Conference on Machine Learning and Cybernetics, 2003 , Vol.4, 2569--2572. Nov. 2003
|
| |
22
|
|
 |
23
|
Shuo Wang , Feng Jing , Jibo He , Qixing Du , Lei Zhang, IGroup: presenting web image search results in semantic clusters, Proceedings of the SIGCHI conference on Human factors in computing systems, April 28-May 03, 2007, San Jose, California, USA
[doi> 10.1145/1240624.1240718]
|
|