Mosaic feedback for sketch training and retrieval improvement

I. la Tendresse1, O. Kao1, M. Skubowius1
1Department of Computer Science, Technical University of Clausthal-Zellerfeld, Clausthal-Zellerfeld, Germany

Tóm tắt

The results of queries in image databases are usually presented as a thumbnail list. Subsequently, each of these images can be used for refinement of the initial query. This approach is however not suitable for queries by sketch: in order to receive the desired images the user has to recognise misleading areas of the sketch and to modify these appropriately. This is a non-trivial problem, especially for users with limited expertise in image retrieval and when complex features are used for the image description and comparison. Therefore, this paper presents a mosaic-based technique for sketch feedback, which combines the best sections of the database into a single image. An analysis of individual sections and the linked target images shows, which areas of the sketch lead to poor results and should be modified. Performance measurements show a significant increase of the recall rate.

Từ khóa

#Feedback #Image retrieval #Image databases #Image analysis #Spatial databases #Computer science #Image recognition #Information retrieval #Art #Content based retrieval

Tài liệu tham khảo

venters, 2000, A review of content-based image retrieval systems, Tech Rep jtap-054 University of Manchester chang, 1996, VisualSeeK: A fully automated content-based image query system, Proceedings of ACM Multimedia, 87 10.1117/12.205303 feil, 1999, Real-time image analysis using wavelets: The a trous algorithm on MTMD architectures, IS& T/SPIE's Electronic Imaging Newsletter, 9, 4 10.1145/218380.218454 rui, 1998, Relevance feedback techniques in interactive content-based image Retrieval, Proceedings of SPIE, 3312, 25, 10.1117/12.298455 del bimbo, 1999, Visual Information Retrieval kao, 2001, Efficient Dynamic image retrieval using the a trous wavelet transformation, Advances in Multimedia Information Processing LNCS, 2795, 343