11th International Multimedia Modelling Conference (MMM'05)
Effective Feature Extraction for Play Detection in American Football Video
Melbourne, Australia
January 12-January 14
ISBN: 0-7695-2164-9
The fact that a typical broadcast can last over 3 hours for a game of 60 minutes makes video summarization of American football games most desirable. In this paper, we present several feature extraction methods for play detection in American football video. Wavelet based motion analysis is used to extract the trend component from the noisy motion vectors; a hybrid field-color model detects field area with both high accuracy and fast speed; and a prior knowledge driven line detection method uses the court information to estimate miss-detections. Based on the so-extracted features, a boosting chain is used for feature selection and decision making. Tested on large-size video data, the detection performance of our work is very promising.
Citation:
Tie-Yan Liu, Wei-Ying Ma, Hong-Jiang Zhang, "Effective Feature Extraction for Play Detection in American Football Video," mmm, pp.164-171, 11th International Multimedia Modelling Conference (MMM'05), 2005