MetaCartSign in to MyCiteSeer

Include Citations | Advanced Search | Help

Include Citations | Advanced Search | Help

  Filter image browsing: interactive image retrieval by using database overviews (1998) [5 citations — 0 self]

Download:
Download as a PDF
by Marcel Worring
Multimedial Tools and Applications
http://carol.wins.uva.nl/~worring/pub/papers/vendrig-fib.pdf
Add To MetaCart

Abstract:

Abstract. Human-computer interaction is a decisive factor in effective content-based access to large image repositories. In current image retrieval systems the user refines his query by selecting example images from a relevance ranking. Since the top ranked images are all similar, user feedback often results in rearrangement of the presented images only. For better incorporation of user interaction in the retrieval process, we have developed the Filter Image Browsing method. It also uses feedback through image selection. However, it is based on differences between images rather than similarities. Filter Image Browsing presents overviews of relevant parts of the database to users. Through interaction users then zoom in on parts of the image collection. By repeatedly limiting the information space, the user quickly ends up with a small amount of relevant images. The method can easily be extended for the retrieval of multimedia objects. For evaluation of the Filter Image Browsing retrieval concept, a user simulation is applied to a pictorial database containing 10,000 images acquired from the World Wide Web by a search robot. The simulation incorporates uncertainty in the definition of the information need by users. Results show Filter Image Browsing outperforms plain interactive similarity ranking in required effort from the user. Also, the method produces predictable results for retrieval sessions, so that the user quickly knows if a successful session is possible at all. Furthermore, the simulations show the overview techniques are suited for applications such as hand-held devices where screen space is limited.

Citations

2217 Introduction to Modern Information Retrieval – Salton, McGill - 1983
681 W.: Query by Image and Video Content: The QBIC System – Flickner, Sawhney, et al. - 1997
412 Scatter/gather: A cluster-based approach to browsing large document collections – Cutting, Pedersen, et al. - 1992
383 Photobook: Contentbased manipulation of image databases – Pentland, Picard, et al. - 1996
314 Relevance Feedback: A Power Tool for Interactive Content-Based Image Retrieval – Rui, Huang, et al. - 1998
217 Virage image search engine: An open framework for image management – Bach, Fuller, et al. - 1996
202 Image Retrieval: Current Techniques, Promising Directions And Open Issues – Rui, Huang, et al. - 1999
126 Visually searching the Web for content – Smith, Chang - 1997
67 PicHunter: Bayesian relevance feedback for image retrieval – Cox, Miller, et al. - 1996
54 Multimedia Information Systems – Grosky - 1994
49 An Image and Video Search Engine for the World-Wide Web – Smith, Chang - 1997
37 Target testing and the PicHunter Bayesian multimedia retrieval system – Cox, Miller, et al.
34 Incorporating user preferences in multimedia queries – Fagin, Wimmers - 1997
24 Beyond query by example – Santini, Jain - 1998
12 Infoscopes: Multimedia information systems – Jain - 1996
10 Pictoseek: A content-based image search engine for the www – Gevers, Smeulders - 1997
10 Adaptive color-image embedding for database navigation – Rubner, Tomasi, et al. - 1998
8 The use of MMR and diversity-based reranking in document reranking and summarization – Goldstein, Carbonell - 1998
1 image browsing,” Technical Report 5, Intelligent Sensory Information Systems, Faculty WINS, Universiteit van Amsterdam, http:carol.wins.uva.nl/ ∼ vendrig/ papers/isis 5.ps.gz – Vendrig, Worring, et al. - 1998