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Instantly telling what happens in a video sequence using simple features

机译:立即讲述使用简单功能的视频序列中发生的内容

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This paper presents an efficient method to tell what happens (e.g. recognize actions) in a video sequence from only a couple of frames in real time. For the sake of instantaneity, we employ two types of computationally efficient but perceptually important features, optical flow and edge, to capture motion and shape/structure information in video sequences. It is known that the two types of features are not sparse and can be unreliable or ambiguous at certain parts of a video. In order to endow them with strong discriminative power, we extend an efficient contrast set mining technique, the Emerging Pattern (EP) mining method, to learn joint features from videos to differentiate action classes. Experimental results show that the combination of the two types of features achieves superior performance in differentiating actions than that of using each single type of features alone. The learned features are discriminative, statistically significant (reliable) and display semantically meaningful shape-motion structures of human actions. Besides the instant action recognition, we also extend the proposed approach to anomaly detection and sequential event detection. The experiments demonstrate encouraging results.
机译:本文介绍了一种有效的方法,可以实时从视频序列中判断出现(例如,识别操作)。为了瞬失,我们使用两种类型的计算上有效但感知的重要特征,光学流和边缘,以捕获视频序列中的运动和形状/结构信息。众所周知,这两种特征不是稀疏的,并且在视频的某些部分可能是不可靠或模糊的。为了赋予它们具有强烈的辨别力,我们扩展了一个有效的对比集采矿技术,新兴模式(EP)挖掘方法,学习视频的联合特征来区分动作类。实验结果表明,两种类型的特征的组合在区分的情况下实现了比使用每种单一类型的特征的动作的卓越性能。学习的特征是歧视性的,统计学显着(可靠),并显示人类动作的语义有意义的形状运动结构。除了即时行动识别之外,我们还扩展了提出的异常检测和顺序事件检测方法。实验表明了令人鼓舞的结果。

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