Segregated feedback with performance-based adaptive sampling for interactive news video retrieval

Existing video research incorporates the use of relevance feedback based on user-dependent interpretations to improve the retrieval results. In this paper, we segregate the process of relevance feedback into 2 distinct facets: (a) recall-directed feedback; and (b) precision-directed feedback. The recall-directed facet employs general features such as text and high level features (HLFs) to maximize efficiency and recall during feedback, making it very suitable for large corpuses. The precision-directed facet on the other hand uses many other multimodal features in an active learning environment for improved accuracy. Combined with a performance-based adaptive sampling strategy, this process continuously re-ranks a subset of instances as the user annotates. Experiments done using TRECVID 2006 dataset show that our approach is efficient and effective.

[1]  Tat-Seng Chua,et al.  TRECVID 2005 by NUS PRIS , 2005, TRECVID.

[2]  Edward Y. Chang,et al.  Support Vector Machine Concept-Dependent Active Learning for Image Retrieval , 2005 .

[3]  Thomas S. Huang,et al.  Relevance feedback: a power tool for interactive content-based image retrieval , 1998, IEEE Trans. Circuits Syst. Video Technol..

[4]  John R. Smith,et al.  IBM Research TRECVID-2009 Video Retrieval System , 2009, TRECVID.

[5]  Stephen E. Robertson,et al.  Relevance weighting of search terms , 1976, J. Am. Soc. Inf. Sci..

[6]  Sheng Tang,et al.  TRECVID 2006 by NUS-I2R , 2006, TRECVID.

[7]  Rong Yan,et al.  Multi-Lingual Broadcast News Retrieval , 2006, TRECVID.

[8]  Thomas S. Huang,et al.  Small sample learning during multimedia retrieval using BiasMap , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[9]  Dennis Koelma,et al.  The MediaMill TRECVID 2008 Semantic Video Search Engine , 2008, TRECVID.

[10]  Jin Zhao,et al.  Video Retrieval Using High Level Features: Exploiting Query Matching and Confidence-Based Weighting , 2006, CIVR.