Highlight Ranking for Racquet Sports Video in User Attention Subspaces Based on Relevance Feedback

In this paper, we propose a method to rank the highlights of broadcast racquet sports videos. Compared with previous work, we integrate relevance feedback into highlight ranking framework to effectively capture the user's interest in attention subspaces and generate personalized ranking result. First, we establish three user attention subspaces and extract audio, visual, temporal affective features to represent the human perception of highlight in each subspace. Then, the highlight ranking models are constructed using support vector regression (SVR) for the three subspaces respectively. Finally, the three submodels are linearly combined to generate the final ranking model. Relevance feedback technique is employed to adjust the weights of each submodel to obtain the result which is suitable to the user's preference. Experimental results demonstrate our approach is effective.

[1]  Alan Hanjalic,et al.  Generic approach to highlights extraction from a sport video , 2003, Proceedings 2003 International Conference on Image Processing (Cat. No.03CH37429).

[2]  Yifan Zhang,et al.  Highlight ranking for sports video browsing , 2005, MULTIMEDIA '05.

[3]  A. Treisman,et al.  A feature-integration theory of attention , 1980, Cognitive Psychology.

[4]  Yunqian Ma,et al.  Selecting of the Loss Function for Robust Linear Regression , 2002 .

[5]  Regunathan Radhakrishnan,et al.  Generation of sports highlights using motion activity in combination with a common audio feature extraction framework , 2003, Proceedings 2003 International Conference on Image Processing (Cat. No.03CH37429).

[6]  Qingming Huang,et al.  Subjective evaluation criterion for selecting affective features and modeling highlights , 2006, Electronic Imaging.

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