Motion based event recognition using HMM

Gu Xu, Yu-Fei Ma, HongJiang Zhang, Shiqiang Yang
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引用次数: 49

Abstract

Motion is an important cue for video understanding and is widely used in many semantic video analyses. We present a new motion representation scheme in which motion in a video is represented by the responses of frames to a set of motion filters. Each of these filters is designed to be most responsive to a type of dominant motion. Then we employ hidden Markov models (HMMs) to characterize the motion patterns based on these features and thus classify basketball video into 16 events. The evaluation by human satisfaction rate to classification result is 75%, demonstrating effectiveness of the proposed approach to recognizing semantic events in video.
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基于HMM的运动事件识别
运动是视频理解的重要线索,被广泛应用于许多语义视频分析中。我们提出了一种新的运动表示方案,其中视频中的运动由帧对一组运动滤波器的响应来表示。每一个过滤器都被设计成对一种主导运动最敏感。然后利用隐马尔可夫模型(hmm)基于这些特征来描述运动模式,从而将篮球视频分为16个事件。人类对分类结果的满意率评价为75%,证明了该方法对视频中语义事件识别的有效性。
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