Extract highlights from baseball game video with hidden Markov models

Peng Chang, Mei Han, Yihong Gong
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引用次数: 165

Abstract

We describe a statistical method to detect highlights in a baseball game video. The input video is first segmented into scene shots, within which the camera motion is continuous. Our approach is based on the observations that (1) most highlights in baseball games are composed of certain types of scene shots and (2) those scene shots exhibit special transition context in time. To exploit those two observations, we first build statistical models for each type of scene shots with products of histograms, and then for each type of highlight a hidden Markov model is learned to represent the context of transition in the time domain. A probabilistic model can be obtained by combining the two, which is used for highlight detection and classification. Satisfactory results have been achieved on initial experimental results.
用隐马尔可夫模型从棒球比赛视频中提取亮点
我们描述了一种统计方法来检测棒球比赛视频中的亮点。输入的视频首先被分割成场景镜头,其中摄像机的运动是连续的。我们的方法是基于以下观察:(1)棒球比赛中的大多数亮点是由某些类型的场景镜头组成的;(2)这些场景镜头在时间上表现出特殊的过渡背景。为了利用这两个观察结果,我们首先用直方图的乘积为每种类型的场景拍摄建立统计模型,然后对每种类型的高光学习一个隐藏马尔可夫模型来表示时域内的过渡背景。将两者结合得到一个概率模型,用于高光检测和分类。初步实验结果令人满意。
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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