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Real-time video event detection in crowded scenes using MPEG derived features : a multiple instance learning approach

机译:使用MPEG衍生功能在拥挤场景中进行实时视频事件检测:多实例学习方法

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摘要

This paper presents an investigation into event detection in crowded scenes, where the event of interest co-occurs with other activities and only binary labels at the clip level are available. The proposed approach incorporates a fast feature descriptor from the MPEG domain, and a novel multiple instance learning (MIL) algorithm using sparse approximation and random sensing. MPEG motion vectors are used to build particle trajectories that represent the motion of objects in uniform video clips, and the MPEG DCT coefficients are used to compute a foreground map to remove background particles. Trajectories are transformed into the Fourier domain, and the Fourier representations are quantized into visual words using the K-Means algorithm. The proposed MIL algorithm models the scene as a linear combination of independent events, where each event is a distribution of visual words. Experimental results show that the proposed approaches achieve promising results for event detection compared to the state-of-the-art.
机译:本文介绍了在拥挤场景中的事件检测的研究,其中感兴趣的事件与其他活动同时发生,并且仅片段级别的二进制标签可用。所提出的方法结合了来自MPEG域的快速特征描述符,以及使用稀疏近似和随机感测的新颖多实例学习(MIL)算法。 MPEG运动矢量用于构建表示物体在统一视频剪辑中运动的粒子轨迹,而MPEG DCT系数用于计算前景图以去除背景粒子。轨迹被转换为傅立叶域,并使用K-Means算法将傅立叶表示量化为视觉单词。提出的MIL算法将场景建模为独立事件的线性组合,其中每个事件都是视觉单词的分布。实验结果表明,与最新技术相比,该方法在事件检测方面取得了可喜的成果。

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