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12th International Conference on Image Analysis and Processing (ICIAP'03)
Combining Words and Object-Based Visual Features in Image Retrieval
Mantova, Italy
September 17-September 19
ISBN: 0-7695-1948-2
Akihiko Nakagawa, NTT Data Corp. and Japan Systems Co., Ltd.
Andrea Kutics, NTT Data Corp. and Japan Systems Co., Ltd.
Kiyotaka Tanaka, NTT Data Corp. and Japan Systems Co., Ltd.
Masaomi Nakajima, NTT Data Corp.
This paper presents a novel approach for image retrieval by combining textual and object-based visual features in order to reduce the inconsistency between the subjective user?s similarity interpretation and the retrieval results produced by objective similarity models. A novel multi-scale segmentation framework is proposed to detect prominent image objects. These objects are clustered according to their visual features and mapped to related words determined by psychophysical studies. Furthermore, a hierarchy of words expressing higher-level meaning is determined on the basis of natural language processing and user evaluation. Experiments conducted on a large set of natural images showed that higher retrieval precision in terms of estimating user retrieval semantics could be achieved via this two-layer word association and also by supporting various query specifications and options.
Citation:
Akihiko Nakagawa, Andrea Kutics, Kiyotaka Tanaka, Masaomi Nakajima, "Combining Words and Object-Based Visual Features in Image Retrieval," iciap, pp.354, 12th International Conference on Image Analysis and Processing (ICIAP'03), 2003
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