Effective Feature Extraction for Play Detection in American Football Video

Tie-Yan Liu, Wei-Ying Ma, HongJiang Zhang
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引用次数: 26

Abstract

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.
橄榄球视频中有效的特征提取方法
一场60分钟的比赛,一场典型的转播可以持续3个多小时,这使得美式足球比赛的视频摘要最受欢迎。在本文中,我们提出了几种特征提取方法用于美式橄榄球视频的比赛检测。采用基于小波变换的运动分析方法,从噪声运动向量中提取运动趋势分量;混合场色模型检测场面积精度高、速度快;先验知识驱动的线检测方法利用球场信息对漏检进行估计。基于所提取的特征,采用提升链进行特征选择和决策。在大尺寸视频数据上进行了测试,我们的工作检测性能是很有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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