PicHunter: Bayesian relevance feedback for image retrieval

This paper describes PicHunter, an image retrieval system that implements a novel approach to relevance feedback, such that the entire history of user selections contributes to the system's estimate of the user's goal image. To accomplish this, PicHunter uses Bayesian learning based on a probabilistic model of a user's behavior. The predictions of this model are combined with the selections made during a search to estimate the probability associated with each image. These probabilities are then used to select images for display. Details of our model of a user's behavior were tuned using an off-line leaning algorithm. For clarity, our studies were done with the simplest possible user interface but the algorithm can easily be incorporated into systems which support complex queries, including most previously proposed systems. However, even with this constraint and simple image features, PicHunter is able to locate randomly selected targets in a database of 4522 images after displaying an average of only 55 groups of 4 images which is over 10 times better than chance. We therefore expect that the performance of current image database retrieval systems can be improved by incorporation of the techniques described here.

[1]  Toshikazu Kato,et al.  Query by Visual Example - Content based Image Retrieval , 1992, EDBT.

[2]  Rosalind W. Picard,et al.  Interactive Learning Using a "Society of Models" , 2017, CVPR 1996.

[3]  Patrick M. Kelly,et al.  CANDID: comparison algorithm for navigating digital image databases , 1994, Seventh International Working Conference on Scientific and Statistical Database Management.

[4]  Alberto Del Bimbo,et al.  Visual image retrieval by elastic deformation of object sketches , 1994, Proceedings of 1994 IEEE Symposium on Visual Languages.

[5]  Masahito Hirakawa,et al.  An image database system facilitating icon-driven spatial information definition and retrieval , 1991, Proceedings 1991 IEEE Workshop on Visual Languages.

[6]  Toshikazu Kato,et al.  Cognitive view mechanism for multimedia database system , 1991, [1991] Proceedings. First International Workshop on Interoperability in Multidatabase Systems.

[7]  Tom Minka,et al.  Interactive learning with a "Society of Models" , 1996, Proceedings CVPR IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[8]  Dragutin Petkovic,et al.  Query by Image and Video Content: The QBIC System , 1995, Computer.

[9]  Toshikazu Kato,et al.  Learning of personal visual impression for image database systems , 1993, Proceedings of 2nd International Conference on Document Analysis and Recognition (ICDAR '93).

[10]  G. Yihong,et al.  An image database system with fast image indexing capability based on color histograms , 1994, Proceedings of TENCON'94 - 1994 IEEE Region 10's 9th Annual International Conference on: 'Frontiers of Computer Technology'.

[11]  W. Bruce Croft,et al.  A Comparison of Text Retrieval Models , 1992, Comput. J..

[12]  Chung-Sheng Li,et al.  Image matching by means of intensity and texture matching in the Fourier domain , 1996, Electronic Imaging.

[13]  M. Oda Context dependency effect in the formation of image concepts and its application , 1991, Conference Proceedings 1991 IEEE International Conference on Systems, Man, and Cybernetics.

[14]  Ingemar J. Cox,et al.  Target testing and the PicHunter Bayesian multimedia retrieval system , 1996, Proceedings of the Third Forum on Research and Technology Advances in Digital Libraries,.

[15]  James C. French,et al.  Indexing multispectral images for content-based retrieval , 1995, Other Conferences.

[16]  Michael J. Swain,et al.  Indexing via color histograms , 1990, [1990] Proceedings Third International Conference on Computer Vision.

[17]  Michael J. Swain,et al.  The capacity of color histogram indexing , 1994, 1994 Proceedings of IEEE Conference on Computer Vision and Pattern Recognition.