Self-Organising Maps as a Relevance Feedback Technique in Content-Based Image Retrieval |
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Authors: | Jorma Laaksonen Markus Koskela Sami Laakso Erkki Oja |
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Affiliation: | (1) Laboratory of Computer and Information Science, Helsinki University of Technology, Fin-02015 HUT, Finland, FI |
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Abstract: | ![]() Self-Organising Maps (SOMs) can be used in implementing a powerful relevance feedback mechanism for Content-Based Image Retrieval (CBIR). This paper introduces the PicSOM CBIR system, and describes the use of SOMs as a relevance feedback technique in it. The technique is based on the SOM’s inherent property of topology-preserving mapping from a high-dimensional feature space to a two-dimensional grid of artificial neurons. On this grid similar images are mapped in nearby locations. As image similarity must, in unannotated databases, be based on low-level visual features, the similarity of images is dependent on the feature extraction scheme used. Therefore, in PicSOM there exists a separate tree-structured SOM for each different feature type. The incorporation of the relevance feedback and the combination of the outputs from the SOMs are performed as two successive processing steps. The proposed relevance feedback technique is described, analysed qualitatively, and visualised in the paper. Also, its performance is compared with a reference method. |
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Keywords: | :Content-Based Image Retrienal (CBIR) Multi-dimensional indexing Neural networks Relevance feedback Self-Organizing Map (SOM) Unannotated image databases |
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