Modeling timing features in broadcast news video classification

Broadcast news programs are well-structured video, and timing can be a strong predictor for specific types of news reports. However, learning a classifier using timing features may not be an easy task when training data are noisy. We approach the problem from the generative model perspective, and approximate the class density in a non-parametric fashion. The results show that timing is a simple but extremely effective feature, and our method can achieve significantly better performance than a discriminative classifier.

[1]  D. W. Scott,et al.  Multivariate Density Estimation, Theory, Practice and Visualization , 1992 .

[2]  Wei-Hao Lin,et al.  Merging rank lists from multiple sources in video classification , 2004, 2004 IEEE International Conference on Multimedia and Expo (ICME) (IEEE Cat. No.04TH8763).

[3]  David W. Scott,et al.  Multivariate Density Estimation: Theory, Practice, and Visualization , 1992, Wiley Series in Probability and Statistics.

[4]  Trevor J. Hastie,et al.  Discriminative vs Informative Learning , 1997, KDD.

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