| Similarity space projection for web image search and annotation |
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International Multimedia Conference
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Proceedings of the 7th ACM SIGMM international workshop on Multimedia information retrieval
table of contents
Hilton, Singapore
SESSION: Oral session 2: web searching and applications
table of contents
Pages: 49 - 56
Year of Publication: 2005
ISBN:1-59593-244-5
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Authors
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Ying Liu
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Microsoft Research Asia, Beijing, P. R. China and Monash University, Australia
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Tao Qin
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Microsoft Research Asia, Beijing, P. R. China and Tsinghua University, Beijing, P. R. China
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Tie-Yan Liu
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Microsoft Research Asia, Beijing, P. R. China
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Lei Zhang
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Microsoft Research Asia, Beijing, P. R. China
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Wei-Ying Ma
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Microsoft Research Asia, Beijing, P. R. China
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Downloads (6 Weeks): 4, Downloads (12 Months): 49, Citation Count: 0
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ABSTRACT
Web image search has been explored and developed in academic as well as commercial areas for over a decade. To measure the similarity between Web images and user queries, most of the existing Web image search systems try to convert an image to textual keywords by analyzing the textual information available (such as surrounding text and image filename) with or without leveraging image visual features (such as color, texture, shape). In this way, the existing systems transform "Web images" to the "query (text)" space so as to compare the relevance of images to the query. In this paper, we present a novel solution to Web image search - similarity space projection (SSP). This algorithm takes images and queries as two heterogeneous object peers, and projects them into a third Euclidean "similarity space" in which their similarity can be directly measured. The rule of projection guarantees that in the new space the relevant images are kept close to the corresponding query and those irrelevant ones are away from it. Experiments on real-world Web image collections showed that the proposed algorithm significantly outperformed traditional information retrieval models (such as vector space model) in the application of image search. Besides Web image search, we demonstrate that this algorithm can also be applied to image annotation scenario, and has promising performance. Thus, this algorithm unifies Web image search and image annotation into same framework.
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.
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