Learning hidden semantic cues using support vector clustering

This paper presents a method to infer hidden semantic cues by accumulating the knowledge learned from relevance feedback sessions. We propose to explicitly represent a semantic space using a probabilistic model. In short-term learning, we apply the general 2-class SVM classification to initialize the semantic space. Once the accumulated semantic space becomes impractically large, we propose using support vector clustering (SVC) to construct a more compact and still meaningful semantic space with lower dimensionality. Given a dimension-reduced semantic space, we then perform the image query in terms of the semantic attributes instead of merely the visual features. Our experimental results and comparisons demonstrate that the proposed semantic representation as well as the SVC-based technique indeed achieves promising results.

[1]  Matthieu Cord,et al.  Long-term similarity learning in content-based image retrieval , 2002, Proceedings. International Conference on Image Processing.

[2]  Dustin Boswell,et al.  Introduction to Support Vector Machines , 2002 .

[3]  Li Liu,et al.  An image retrieval method based on analysis of feedback sequence log , 2003, Pattern Recognit. Lett..

[4]  James Ze Wang,et al.  IRM: integrated region matching for image retrieval , 2000, ACM Multimedia.

[5]  Hava T. Siegelmann,et al.  Support Vector Clustering , 2002, J. Mach. Learn. Res..

[6]  Jianhua Yang,et al.  Support vector clustering through proximity graph modelling , 2002, Proceedings of the 9th International Conference on Neural Information Processing, 2002. ICONIP '02..

[7]  Bir Bhanu,et al.  A new semi-supervised EM algorithm for image retrieval , 2003, 2003 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2003. Proceedings..

[8]  Wei-Ying Ma,et al.  Learning a semantic space from user's relevance feedback for image retrieval , 2003, IEEE Trans. Circuits Syst. Video Technol..

[9]  Nello Cristianini,et al.  An introduction to Support Vector Machines , 2000 .