| Retrieving lightly annotated images using image similarities |
| Full text |
Pdf
(208 KB)
|
| Source
|
Symposium on Applied Computing
archive
Proceedings of the 2005 ACM symposium on Applied computing
table of contents
Santa Fe, New Mexico
SESSION: Information access and retrieval (IAR)
table of contents
Pages: 1031 - 1037
Year of Publication: 2005
ISBN:1-58113-964-0
|
|
Authors
|
|
Masashi Inoue
|
National Institute of Informatics, Chiyoda-ku Tokyo, Japan
|
|
Naonori Ueda
|
NTT Communication Science Laboratories, Seika-cho, Soraku-gun Kyoto, Japan
|
|
| Sponsor |
|
| Publisher |
|
| Bibliometrics |
Downloads (6 Weeks): 2, Downloads (12 Months): 29, Citation Count: 2
|
|
|
ABSTRACT
Users' search needs are often represented by words and images are retrieved according to such textual queries. Annotation words assigned to the stored images are most useful to connect queries to the images. However, due to annotation cost, quite limited amount of annotation words are available in many cases. When annotations are not given at all, there needs to be some techniques that assign annotations automatically. When only a few annotation words are given to each image (lightly annotated), there need to be some enhancement techniques that best use the available annotations. We address the later problem by estimating word associations to fill in the lexical gap between queries and annotations. The model of word associations can be learned from the data. However, since images are only lightly annotated, their sparseness in computing word associations becomes crucial. To compensate the sparseness, we propose a novel data exploration technique in which image similarities contribute to the estimation of word associations on the assumption that similar images have similar semantic concepts. We experimentally show the potential benefit of our approach.
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
|
|
 |
3
|
|
 |
4
|
|
| |
5
|
|
 |
6
|
|
| |
7
|
D. Hiemstra. Using Language Models for Information Retrieval. PhD thesis, Centre for Telematics and Information Technology, University of Twente, January 2001.
|
| |
8
|
M. Inoue. On the need for annotation-based image retrieval. In Workshop on Information Retrieval in Context (IRiX), pages 44--46, Sheffield, UK, July 2004.
|
 |
9
|
|
 |
10
|
|
 |
11
|
|
| |
12
|
|
| |
13
|
|
 |
14
|
|
| |
15
|
|
 |
16
|
|
CITED BY 2
|
|
|
|
Kuan-Ching Li , Chiou-Nan Chen , Tsu-Yi Hsieh , Chia-Hsien Wen , Joung-Liang Lan , Der-Yuan Chen , Chuan-Yi Tang, Towards design of a nailfold capillary microscopy image analysis and diagnosis framework using grid technology, Journal of High Speed Networks, v.16 n.1, p.81-89, January 2007
|
|